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Artificial intelligence guided discovery of a barrier-protective therapy in inflammatory bowel disease

Author

Listed:
  • Debashis Sahoo

    (University of California San Diego
    University of California San Diego
    University of California San Diego)

  • Lee Swanson

    (University of California San Diego)

  • Ibrahim M. Sayed

    (Assiut University
    University of California San Diego)

  • Gajanan D. Katkar

    (University of California San Diego)

  • Stella-Rita Ibeawuchi

    (University of California San Diego)

  • Yash Mittal

    (University of California San Diego)

  • Rama F. Pranadinata

    (University of California San Diego)

  • Courtney Tindle

    (University of California San Diego)

  • Mackenzie Fuller

    (University of California San Diego)

  • Dominik L. Stec

    (University of California San Diego)

  • John T. Chang

    (University of California San Diego)

  • William J. Sandborn

    (University of California San Diego)

  • Soumita Das

    (University of California San Diego)

  • Pradipta Ghosh

    (University of California San Diego
    University of California San Diego
    University of California San Diego
    Veterans Affairs Medical Center)

Abstract

Modeling human diseases as networks simplify complex multi-cellular processes, helps understand patterns in noisy data that humans cannot find, and thereby improves precision in prediction. Using Inflammatory Bowel Disease (IBD) as an example, here we outline an unbiased AI-assisted approach for target identification and validation. A network was built in which clusters of genes are connected by directed edges that highlight asymmetric Boolean relationships. Using machine-learning, a path of continuum states was pinpointed, which most effectively predicted disease outcome. This path was enriched in gene-clusters that maintain the integrity of the gut epithelial barrier. We exploit this insight to prioritize one target, choose appropriate pre-clinical murine models for target validation and design patient-derived organoid models. Potential for treatment efficacy is confirmed in patient-derived organoids using multivariate analyses. This AI-assisted approach identifies a first-in-class gut barrier-protective agent in IBD and predicted Phase-III success of candidate agents.

Suggested Citation

  • Debashis Sahoo & Lee Swanson & Ibrahim M. Sayed & Gajanan D. Katkar & Stella-Rita Ibeawuchi & Yash Mittal & Rama F. Pranadinata & Courtney Tindle & Mackenzie Fuller & Dominik L. Stec & John T. Chang &, 2021. "Artificial intelligence guided discovery of a barrier-protective therapy in inflammatory bowel disease," Nature Communications, Nature, vol. 12(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-24470-5
    DOI: 10.1038/s41467-021-24470-5
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    References listed on IDEAS

    as
    1. Jack W Scannell & Jim Bosley, 2016. "When Quality Beats Quantity: Decision Theory, Drug Discovery, and the Reproducibility Crisis," PLOS ONE, Public Library of Science, vol. 11(2), pages 1-21, February.
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