4.8 Article

A deep learning framework for drug repurposing via emulating clinical trials on real-world patient data

Journal

NATURE MACHINE INTELLIGENCE
Volume 3, Issue 1, Pages 68-+

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s42256-020-00276-w

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Funding

  1. National Center for Advancing Translational Research of the National Institutes of Health [UL1TR002733]

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Drug repurposing is an effective strategy to discover new uses for existing drugs by analyzing real-world data, offering new possibilities for disease treatment.
Drug repurposing is an effective strategy to identify new uses for existing drugs, providing the quickest possible transition from bench to bedside. Real-world data, such as electronic health records and insurance claims, provide information on large cohorts of users for many drugs. Here we present an efficient and easily customized framework for generating and testing multiple candidates for drug repurposing using a retrospective analysis of real-world data. Building upon well-established causal inference and deep learning methods, our framework emulates randomized clinical trials for drugs present in a large-scale medical claims database. We demonstrate our framework on a coronary artery disease cohort of millions of patients. We successfully identify drugs and drug combinations that substantially improve the coronary artery disease outcomes but haven't been indicated for treating coronary artery disease, paving the way for drug repurposing.

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