Network meta analysis to predict the efficacy of an approved treatment in a new indication
- PMID: 38044545
- DOI: 10.1002/jrsm.1683
Network meta analysis to predict the efficacy of an approved treatment in a new indication
Abstract
Drug repurposing refers to the process of discovering new therapeutic uses for existing medicines. Compared to traditional drug discovery, drug repurposing is attractive for its speed, cost, and reduced risk of failure. However, existing approaches for drug repurposing involve complex, computationally-intensive analytical methods that are not widely used in practice. Instead, repurposing decisions are often based on subjective judgments from limited empirical evidence. In this article, we develop a novel Bayesian network meta-analysis (NMA) framework that can predict the efficacy of an approved treatment in a new indication and thereby identify candidate treatments for repurposing. We obtain predictions using two main steps: first, we use standard NMA modeling to estimate average relative effects from a network comprised of treatments studied in both indications in addition to one treatment studied in only one indication. Then, we model the correlation between relative effects using various strategies that differ in how they model treatments across indications and within the same drug class. We evaluate the predictive performance of each model using a simulation study and find that the model minimizing root mean squared error of the posterior median for the candidate treatment depends on the amount of available data, the level of correlation between indications, and whether treatment effects differ, on average, by drug class. We conclude by discussing an illustrative example in psoriasis and psoriatic arthritis and find that the candidate treatment has a high probability of success in a future trial.
Keywords: Bayesian analysis; biopharmaceutical; decision-making; drug repurposing; evidence synthesis; prediction.
© 2023 John Wiley & Sons Ltd.
References
REFERENCES
-
- Wang B, Kesselheim AS. Characteristics of efficacy evidence supporting approval of supplemental indications for prescription drugs in United States, 2005-14: systematic review. BMJ. 2015;351:h4679.
-
- Dhodapkar M, Zhang AD, Puthumana J, Downing NS, Shah ND, Ross JS. Characteristics of clinical studies used for US Food and Drug Administration supplemental indication approvals of drugs and biologics, 2017 to 2019. JAMA Netw Open. 2021;4(6):e2113224.
-
- Sahragardjoonegani B, Beall RF, Kesselheim AS, Hollis A. Repurposing existing drugs for new uses: a cohort study of the frequency of FDA-granted new indication exclusivities since 1997. J Pharmaceut Policy Pract. 2021;14(1):3.
-
- Cather JC, Young M, Bergman MJ. Psoriasis and psoriatic arthritis. J Clin Aesthet Dermatol. 2017;10(3):S16-S25.
-
- Jain H, Bhat AR, Dalvi H, Godugu C, Singh SB, Srivastava S. Repurposing approved therapeutics for new indication: addressing unmet needs in psoriasis treatment. Curr Res Pharmacol Drug Discov. 2021;2:2.
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