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Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases.

Publication ,  Journal Article
Challa, AP; Zaleski, NM; Jerome, RN; Lavieri, RR; Shirey-Rice, JK; Barnado, A; Lindsell, CJ; Aronoff, DM; Crofford, LJ; Harris, RC; Mayer, IA ...
Published in: Front Genet
2021

Repurposing is an increasingly attractive method within the field of drug development for its efficiency at identifying new therapeutic opportunities among approved drugs at greatly reduced cost and time of more traditional methods. Repurposing has generated significant interest in the realm of rare disease treatment as an innovative strategy for finding ways to manage these complex conditions. The selection of which agents should be tested in which conditions is currently informed by both human and machine discovery, yet the appropriate balance between these approaches, including the role of artificial intelligence (AI), remains a significant topic of discussion in drug discovery for rare diseases and other conditions. Our drug repurposing team at Vanderbilt University Medical Center synergizes machine learning techniques like phenome-wide association study-a powerful regression method for generating hypotheses about new indications for an approved drug-with the knowledge and creativity of scientific, legal, and clinical domain experts. While our computational approaches generate drug repurposing hits with a high probability of success in a clinical trial, human knowledge remains essential for the hypothesis creation, interpretation, "go-no go" decisions with which machines continue to struggle. Here, we reflect on our experience synergizing AI and human knowledge toward realizable patient outcomes, providing case studies from our portfolio that inform how we balance human knowledge and machine intelligence for drug repurposing in rare disease.

Duke Scholars

Published In

Front Genet

DOI

ISSN

1664-8021

Publication Date

2021

Volume

12

Start / End Page

707836

Location

Switzerland

Related Subject Headings

  • 3105 Genetics
  • 1801 Law
  • 1103 Clinical Sciences
  • 0604 Genetics
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Challa, A. P., Zaleski, N. M., Jerome, R. N., Lavieri, R. R., Shirey-Rice, J. K., Barnado, A., … Pulley, J. M. (2021). Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases. Front Genet, 12, 707836. https://doi.org/10.3389/fgene.2021.707836
Challa, Anup P., Nicole M. Zaleski, Rebecca N. Jerome, Robert R. Lavieri, Jana K. Shirey-Rice, April Barnado, Christopher J. Lindsell, et al. “Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases.Front Genet 12 (2021): 707836. https://doi.org/10.3389/fgene.2021.707836.
Challa AP, Zaleski NM, Jerome RN, Lavieri RR, Shirey-Rice JK, Barnado A, et al. Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases. Front Genet. 2021;12:707836.
Challa, Anup P., et al. “Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases.Front Genet, vol. 12, 2021, p. 707836. Pubmed, doi:10.3389/fgene.2021.707836.
Challa AP, Zaleski NM, Jerome RN, Lavieri RR, Shirey-Rice JK, Barnado A, Lindsell CJ, Aronoff DM, Crofford LJ, Harris RC, Alp Ikizler T, Mayer IA, Holroyd KJ, Pulley JM. Human and Machine Intelligence Together Drive Drug Repurposing in Rare Diseases. Front Genet. 2021;12:707836.

Published In

Front Genet

DOI

ISSN

1664-8021

Publication Date

2021

Volume

12

Start / End Page

707836

Location

Switzerland

Related Subject Headings

  • 3105 Genetics
  • 1801 Law
  • 1103 Clinical Sciences
  • 0604 Genetics