Researchers Harness AI to Repurpose Existing Drugs for Treatment of Rare Diseases

New AI model identifies drug candidates for thousands of rare diseases without current therapies

Drawing of a target with pills on lying on top
Image: unoL/Getty Images

At a glance:

  • New AI model identifies possible therapies from existing medicines for thousands of diseases, including rare ones with no current treatments.

  • The AI tool generates new insights on its own, applies them to conditions it was not trained for, and offers explanations for its predictions.

  • AI can expedite the development of more precise treatments with fewer side effects at far lower cost than traditional drug discovery.

There are more than 7,000 rare and undiagnosed diseases globally.

Although each condition occurs in a small number of individuals, collectively these diseases exert a staggering human and economic toll because they affect some 300 million people worldwide.

Yet, with a mere 5 to 7 percent of these conditions having an FDA-approved drug, they remain largely untreated or undertreated.

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Developing new medicines represents a daunting challenge, but a new artificial intelligence tool can propel the discovery of new therapies from existing medicines, offering hope for patients with rare and neglected conditions and for the clinicians who treat them.

Authorship, funding, disclosures

Co-authors included Kexin Huang, Payal Chandak, Qianwen Wang, Shreyas Havaldar, Akhil Vaid, Jure Leskovec, Girish N. Nadkarni, Benjamin S. Glicksberg, and Nils Gehlenborg.

This work was supported by National Science Foundation CAREER award (grant 2339524), National Institutes of Health (grant R01-HD108794), U.S. Department of Defense (grant FA8702-15-D-0001), Amazon Faculty Research, Google Research Scholar Program, AstraZeneca Research, Roche Alliance with Distinguished Scientists, Sanofi iDEA-TECH Award, Pfizer Research, Chan Zuckerberg Initiative, John and Virginia Kaneb Fellowship at HMS, Biswas Family Foundation Transformative Computational Biology Grant in partnership with the Milken Institute, HMS Dean’s Innovation Awards for the Use of Artificial Intelligence, Kempner Institute for the Study of Natural and Artificial Intelligence at Harvard University, and Dr. Susanne E. Churchill Summer Institute in Biomedical Informatics at HMS.