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A Bayesian credible subgroups approach to identifying patient subgroups with positive treatment effects

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  • Patrick M. Schnell
  • Qi Tang
  • Walter W. Offen
  • Bradley P. Carlin

Abstract

Many new experimental treatments benefit only a subset of the population. Identifying the baseline covariate profiles of patients who benefit from such a treatment, rather than determining whether or not the treatment has a population‐level effect, can substantially lessen the risk in undertaking a clinical trial and expose fewer patients to treatments that do not benefit them. The standard analyses for identifying patient subgroups that benefit from an experimental treatment either do not account for multiplicity, or focus on testing for the presence of treatment–covariate interactions rather than the resulting individualized treatment effects. We propose a Bayesian credible subgroups method to identify two bounding subgroups for the benefiting subgroup: one for which it is likely that all members simultaneously have a treatment effect exceeding a specified threshold, and another for which it is likely that no members do. We examine frequentist properties of the credible subgroups method via simulations and illustrate the approach using data from an Alzheimer's disease treatment trial. We conclude with a discussion of the advantages and limitations of this approach to identifying patients for whom the treatment is beneficial.

Suggested Citation

  • Patrick M. Schnell & Qi Tang & Walter W. Offen & Bradley P. Carlin, 2016. "A Bayesian credible subgroups approach to identifying patient subgroups with positive treatment effects," Biometrics, The International Biometric Society, vol. 72(4), pages 1026-1036, December.
  • Handle: RePEc:bla:biomet:v:72:y:2016:i:4:p:1026-1036
    DOI: 10.1111/biom.12522
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    References listed on IDEAS

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    1. Park, Trevor & Casella, George, 2008. "The Bayesian Lasso," Journal of the American Statistical Association, American Statistical Association, vol. 103, pages 681-686, June.
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    Cited by:

    1. Duy Ngo & Richard Baumgartner & Shahrul Mt-Isa & Dai Feng & Jie Chen & Patrick Schnell, 2020. "Bayesian credible subgroup identification for treatment effectiveness in time-to-event data," PLOS ONE, Public Library of Science, vol. 15(2), pages 1-19, February.
    2. Satoshi Morita & Peter Müller & Hiroyasu Abe, 2021. "A semiparametric Bayesian approach to population finding with time‐to‐event and toxicity data in a randomized clinical trial," Biometrics, The International Biometric Society, vol. 77(2), pages 634-648, June.

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