Imaging Platform / en De-risking drug discovery with predictive AI /news/de-risking-drug-discovery-predictive-ai <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img loading="eager" src="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC" width="499" height="294" alt="An illustration depicting microchips and circuits displayed over promising drug molecules" title="An illustration depicting microchips and circuits displayed over promising drug molecules" typeof="foaf:Image"> </picture> </div> <div class="media-caption"> <div class="media-caption__description"> </div> </div> </article> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block block-better-social-sharing-buttons block-social-sharing-buttons-block"> <div style="display: none"><link rel="preload" href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Wed, 17 Jul 2024 19:00:47 +0000 tulrich@broadinstitute.org 5557131 at #WhyIScience Q&A: A computational biologist uses physics to find hidden patterns in cells /news/whyiscience-qa-computational-biologist-uses-physics-find-hidden-patterns-cells <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source 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srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img loading="eager" src="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC" width="499" height="294" alt="An illustration depicting microchips and circuits displayed over promising drug molecules" title="An illustration depicting microchips and circuits displayed over promising drug molecules" typeof="foaf:Image"> </picture> </div> <div class="media-caption"> <div class="media-caption__description"> </div> </div> </article> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block block-better-social-sharing-buttons block-social-sharing-buttons-block"> <div style="display: none"><link rel="preload" href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Tue, 14 Nov 2023 14:00:00 +0000 adicorat 5555866 at New image-based cellular profiling tool peers deeply into metabolic biology /news/lipocyte-profiler-metabolic-biology-tool <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source 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href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Fri, 30 Jun 2023 14:30:09 +0000 makenziekohler 1282386 at Ó³»­´«Ã½ Discovery Center in Cambridge opens to the public this October /news/broad-discovery-center-cambridge-opens-public-october <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source 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</a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Mon, 19 Sep 2022 14:53:09 +0000 kzusi@broadinstitute.org 1195701 at Scaling up cell imaging /news/scaling-cell-imaging <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img loading="eager" src="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC" width="499" height="294" alt="An illustration depicting microchips and circuits displayed over promising drug molecules" title="An illustration depicting microchips and circuits displayed over promising drug molecules" typeof="foaf:Image"> </picture> </div> <div class="media-caption"> <div class="media-caption__description"> </div> </div> </article> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block block-better-social-sharing-buttons block-social-sharing-buttons-block"> <div style="display: none"><link rel="preload" href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Tue, 02 Aug 2022 16:56:36 +0000 aviveros@broadinstitute.org 1155366 at Deep learning model assesses quality of stored blood /news/deep-learning-model-assesses-quality-stored-blood <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source 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href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Mon, 24 Aug 2020 19:28:28 +0000 Corie Lok 642351 at Ó³»­´«Ã½ launches academic-industry cell imaging consortium to speed drug discovery and development /news/broad-institute-launches-academic-industry-cell-imaging-consortium-speed-drug-discovery-and <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img loading="eager" src="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC" width="499" height="294" alt="An illustration depicting microchips and circuits displayed over promising drug molecules" title="An illustration depicting microchips and circuits displayed over promising drug molecules" typeof="foaf:Image"> </picture> </div> <div class="media-caption"> <div class="media-caption__description"> </div> </div> </article> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block block-better-social-sharing-buttons block-social-sharing-buttons-block"> <div style="display: none"><link rel="preload" href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Fri, 10 Jul 2020 14:00:00 +0000 kzusi@broadinstitute.org 631466 at A marriage of microscopy and machine learning /news/marriage-microscopy-and-machine-learning <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source 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</a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Mon, 13 Jan 2020 21:17:17 +0000 Corie Lok 626771 at A chemical approach to imaging cells from the inside /news/chemical-approach-imaging-cells-inside <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img 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href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Thu, 20 Jun 2019 15:55:38 +0000 kzusi@broadinstitute.org 549266 at Research Roundup: July 13, 2018 /news/research-roundup-july-13-2018 <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> <span class="field field--name-uid field--type-entity-reference field--label-hidden"> <span>By Tom Ulrich</span> </span> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" class="datetime">July 17, 2024</time> </span> <div class="hero-section container"> <div class="hero-section__row row"> <div class="hero-section__content hero-section__content_left col-6"> <div class="hero-section__breadcrumbs"> <div class="block block-system block-system-breadcrumb-block"> <nav class="breadcrumb" role="navigation" aria-labelledby="system-breadcrumb"> <h2 id="system-breadcrumb" class="visually-hidden">Breadcrumb</h2> <ol> <li> <a href="/">Home</a> </li> <li> <a href="/news">News</a> </li> </ol> </nav> </div> </div> <div class="hero-section__title"> <div class="block block-layout-builder block-field-blocknodelong-storytitle"> <span class="field field--name-title field--type-string field--label-hidden"><h1>De-risking drug discovery with predictive AI</h1> </span> </div> </div> <div class="hero-section__description"> <div class="block block-layout-builder block-field-blocknodelong-storybody"> <div class="clearfix text-formatted field field--name-body field--type-text-with-summary field--label-hidden field__item"><p>A suite of new machine learning models can estimate the safety of potential new drugs&nbsp;</p> </div> </div> </div> <div class="hero-section__author"> <div class="block block-layout-builder block-extra-field-blocknodelong-storyextra-field-author-custom"> By Claire Hendershot </div> </div> <div class="hero-section__date"> <div class="block block-layout-builder block-field-blocknodelong-storycreated"> <span class="field field--name-created field--type-created field--label-hidden"><time datetime="2024-07-17T15:00:47-04:00" title="Wednesday, July 17, 2024 - 15:00" class="datetime">July 17, 2024</time> </span> </div> </div> </div> <div class="hero-section__right col-6"> <div class="hero-section__image"> <div class="block block-layout-builder block-field-blocknodelong-storyfield-image"> <div class="field field--name-field-image field--type-entity-reference field--label-hidden field__item"> <article class="media media--type-image media--view-mode-multiple-content-types-header"> <div class="field field--name-field-media-image field--type-image field--label-hidden field__item"> <picture> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1921px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop_xl/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=dbToZxMF 1x" media="all and (min-width: 1601px) and (max-width: 1920px)" type="image/png" width="754" height="503"> <source srcset="/files/styles/multiple_ct_header_desktop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=0-ITwBoU 1x" media="all and (min-width: 1340px) and (max-width: 1600px)" type="image/png" width="736" height="520"> <source srcset="/files/styles/multiple_ct_header_laptop/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=cPWOHrDb 1x" media="all and (min-width: 800px) and (max-width: 1339px)" type="image/png" width="641" height="451"> <source srcset="/files/styles/multiple_ct_header_tablet/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=LKBkb22a 1x" media="all and (min-width: 540px) and (max-width: 799px)" type="image/png" width="706" height="417"> <source srcset="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC 1x" media="all and (max-width: 539px)" type="image/png" width="499" height="294"> <img loading="eager" src="/files/styles/multiple_ct_header_phone/public/longstory/Comms_ImagingPlatform_news_0524_v2.png?itok=V92oUOWC" width="499" height="294" alt="An illustration depicting microchips and circuits displayed over promising drug molecules" title="An illustration depicting microchips and circuits displayed over promising drug molecules" typeof="foaf:Image"> </picture> </div> <div class="media-caption"> <div class="media-caption__description"> </div> </div> </article> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block block-better-social-sharing-buttons block-social-sharing-buttons-block"> <div style="display: none"><link rel="preload" href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg" as="image" type="image/svg+xml" crossorigin="anonymous"></div> <div class="social-sharing-buttons"> <a href="https://www.facebook.com/sharer/sharer.php?u=/taxonomy/term/583/feed&amp;title=" target="_blank" title="Share to Facebook" aria-label="Share to Facebook" class="social-sharing-buttons__button share-facebook" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#facebook" /> </svg> </a> <a href="https://twitter.com/intent/tweet?text=+/taxonomy/term/583/feed" target="_blank" title="Share to X" aria-label="Share to X" class="social-sharing-buttons__button share-x" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#x" /> </svg> </a> <a href="mailto:?subject=&amp;body=/taxonomy/term/583/feed" title="Share to Email" aria-label="Share to Email" class="social-sharing-buttons__button share-email" target="_blank" rel="noopener"> <svg width="32px" height="32px" style="border-radius:100%;"> <use href="/modules/contrib/better_social_sharing_buttons/assets/dist/sprites/social-icons--no-color.svg#email" /> </svg> </a> </div> </div> <div class="block block-layout-builder block-field-blocknodelong-storyfield-content-paragraphs"> <div class="field field--name-field-content-paragraphs field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--text-with-sidebar text-with-sidebar"> <div class="field field--name-field-sidebar field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--sidebar-menu sidebar-menu"> <div class="sidebar-menu__col"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Related programs</p> </div> <div class="field field--name-field-links field--type-link field--label-hidden field__items"> <div class="field__item"><a href="/imaging">Imaging Platform</a></div> </div> </div> </div> </div> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Developing a new drug can take years of research and cost millions of dollars. Still, more than 90 percent of drug candidates fail in clinical trials, with even more that never make it to the clinical stage. Many drugs fail because they simply aren’t safe.</p> <p>Researchers at the Ó³»­´«Ã½ of MIT and Harvard have developed AI models that can screen the potential biological effects of drugs before they ever enter a living organism. Srijit Seal, a visiting scholar at the <a href="https://carpenter-singh-lab.broadinstitute.org/" target="_blank">Carpenter-Singh Lab</a> in the Ó³»­´«Ã½'s <a href="/node/8518">Imaging Platform</a>, trained multiple predictive machine learning models to identify chemical and structural drug features likely to cause toxic effects in humans. Together, the tools estimate how a drug may impact diverse outcomes of interest to drug developers: general cellular health, pharmacokinetics, and heart and liver function. As of now, papers describing three of these machine learning tools have been published, in the <em>Journal of Chemical Information and Modeling</em>,<em>&nbsp;Molecular Biology of the Cell</em>, and <em>Chemical Research in Toxicology</em>. A fourth is in the works.</p> <p>Predictive models don’t eliminate laboratory experiments, but they can help researchers narrow the selection pool of potential drugs, allocating more time and resources to experiment on the more promising candidates.&nbsp;</p> <p>Seal began this work after wondering if more toxicology insights could be gleaned from a drug candidate’s chemical structure. Drug toxicity can be an issue even after FDA approval; drug-induced cardiotoxicity (DICT) and drug-induced liver injury (DILI) each contribute to a significant percentage of post-market drug withdrawals. To better understand the complex biological mechanisms that make drugs toxic to human organs, the FDA has curated categorical lists of drugs’ likelihood to cause toxic effects in the heart and liver.</p> <p>"Since the FDA released these datasets, we wondered if we could use them to predict toxicity using machine learning," said Seal.</p> <p>Seal used these FDA-curated lists as training data for two toxicity-predicting machine learning models: one for cardiotoxicity and one for liver injury. With additional inputs of chemical structure, physicochemical properties, and pharmacokinetic parameters, the models learned to identify features that contribute to drug toxicity. The cardiotoxicity predictor, <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">DICTrank Predictor</a>, is the first predictive model of the FDA’s DICT ranking list.</p> <p>Often structurally similar compounds have different effects on liver function in animals and humans, and this is why <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">DILIPredictor</a> had the extra challenge of needing to differentiate toxicity between species. DILIPredictor correctly predicted when compounds would be safe in humans, even if the same compounds were toxic in animals.</p> <p>Drug developers also assess pharmacokinetic effects, or how an organism absorbs, distributes, metabolizes, and clears a drug. It’s crucial to determine these properties as early as possible: drugs that don't distribute to the desired target aren’t efficacious, whereas drugs that stay in the body for too long can induce toxic effects.</p> <p>Pharmacokinetic modeling is difficult, time-consuming, and requires expensive instruments and software. Predictive machine learning could provide a way for researchers to "fail faster" and focus their experimental efforts on the drugs with the best bioavailability. To help achieve this, Seal has been working with collaborators to develop a predictive pharmacokinetic modeling tool.</p> <p>"Machine learning in pharmacokinetics is becoming popular," said Seal. "We wondered if we could design a predictive model and compare it to industry models, for now at least as a proof-of-concept.</p> <p>"Drug design needs some kind of feedback loop to ensure that what you’re designing is actually going to work in the human body and not cause unintended toxicity," he added. This suite of predictive machine learning tools, if applied in early drug discovery, could provide the framework for that loop.</p> <p>Another aspect of drug toxicology is related to cell health. When machine learning models predict a potential impact for a compound, researchers often want more detail, such as the mechanism by which the compound is impacting cells. Seal then turned to features extracted by CellProfiler, an open-source imaging software for interpreting cellular morphological features.&nbsp;</p> <p>"CellProfiler looks at the physical features of cells as image-based data and tries to predict how they have changed with respect to a control," Seal explained. "When we asked industry biologists how they worked with CellProfiler data, they told us that sometimes they didn’t know how to interpret these image-based features in a biological context."&nbsp;</p> <p>To make CellProfiler data more biologically interpretable, Seal developed <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">BioMorph</a>, a deep learning model that combines CellProfiler’s imaging data with data on cell health, such as the rates at which cells grow and multiply. Training on two complementary datasets allows BioMorph to infer how a particular compound’s mechanism of action could affect cell health. When BioMorph was tested on data outside of its training set, the model correctly matched compounds with the cellular features affected by that particular compound.&nbsp;</p> <p>"BioMorph provides further detail that scientists can read and understand from a biological point of view," said Seal. "We’re looking forward to hearing people’s feedback on using BioMorph for their individual test cases."</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro paragraph--view-mode--default"> <div class="field field--name-field-paragraph field--type-entity-reference-revisions field--label-hidden field__items"> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Funding</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Support for these studies was provided by the National Institute of General Medical Sciences, the Cambridge Centre for Data-Driven Discovery, the Swedish Research Council, FORMAS, the Swedish Cancer Foundation, Horizon Europe, the Massachusetts Life Sciences Center, OASIS Consortium, and other sources.&nbsp;</p> </div> </div> </div> <div class="field__item"> <div class="paragraph paragraph--type--table-outro-row paragraph--view-mode--default"> <div class="clearfix text-formatted field field--name-field-heading field--type-text field--label-hidden field__item"><p>Papers cited</p> </div> <div class="clearfix text-formatted field field--name-field-text field--type-text-long field--label-hidden field__item"><p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.jcim.3c01834" target="_blank">Insights into drug cardiotoxicity from biological and chemical data: The first public classifiers for FDA drug-induced cardiotoxicity rank</a>. <em>Journal of Chemical Information and Modeling</em>. Online February 1, 2024. DOI: 10.1021/acs.jcim.3c01834.</p> <p>Seal S, et al. <a href="https://pubs.acs.org/doi/10.1021/acs.chemrestox.4c00015" target="_blank">Improved detection of drug-induced liver injury by integrating predicted in vivo and in vitro data</a>. <em>Chemical Research in Toxicology</em>. Online July 9, 2024. DOI: 10.1021/acs.chemrestox.4c00015.&nbsp;</p> <p>Seal S, et al. <a href="https://www.molbiolcell.org/doi/10.1091/mbc.E23-08-0298" target="_blank">From pixels to phenotypes: Integrating image-based profiling with cell health data as BioMorph features improves interpretability</a>. <em>Molecular Biology of the Cell</em>. Online February 2, 2024. DOI: 10.1091/mbc.E23-08-0298.</p> </div> </div> </div> </div> </div> </div> </div> </div> </div> </div> <div class="content-section container"> <div class="content-section__main"> <div class="block-node-broad-tags block block-layout-builder block-field-blocknodelong-storyfield-broad-tags"> <div class="block-node-broad-tags__row"> <div class="block-node-broad-tags__title">Tags:</div> <div class="field field--name-field-broad-tags field--type-entity-reference field--label-hidden field__items"> <div class="field__item"><a href="/broad-tags/imaging" hreflang="en">Imaging Platform</a></div> <div class="field__item"><a href="/broad-tags/machine-learning" hreflang="en">Machine learning</a></div> <div class="field__item"><a href="/broad-tags/machine-learning-0" hreflang="en">Machine Learning</a></div> <div class="field__item"><a href="/broad-tags/therapeutic-response" hreflang="en">Therapeutics</a></div> </div> </div> </div> </div> </div> Fri, 13 Jul 2018 14:13:18 +0000 tulrich@broadinstitute.org 308096 at