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      Using Bayesian modeling in frequentist adaptive enrichment designs.

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          Abstract

          Our increased understanding of the mechanistic heterogeneity of diseases has pushed the development of targeted therapeutics. We do not expect all patients with a given disease to benefit from a targeted drug; only those in the target population. That is, those with sufficient dysregulation in the biomolecular pathway targeted by treatment. However, due to complexity of the pathway, and/or technical issues with our characterizing assay, it is often hard to characterize the target population until well into large-scale clinical trials. This has stimulated the development of adaptive enrichment trials; clinical trials in which the target population is adaptively learned; and enrollment criteria are adaptively updated to reflect this growing understanding. This paper proposes a framework for group-sequential adaptive enrichment trials. Building on the work of Simon & Simon (2013). Adaptive enrichment designs for clinical trials. Biostatistics 14(4), 613-625), it includes a frequentist hypothesis test at the end of the trial. However, it uses Bayesian methods to optimize the decisions required during the trial (regarding how to restrict enrollment) and Bayesian methods to estimate effect size, and characterize the target population at the end of the trial. This joint frequentist/Bayesian design combines the power of Bayesian methods for decision making with the use of a formal hypothesis test at the end of the trial to preserve the studywise probability of a type I error.

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          Author and article information

          Journal
          Biostatistics
          Biostatistics (Oxford, England)
          Oxford University Press (OUP)
          1468-4357
          1465-4644
          May 17 2017
          Affiliations
          [1 ] Department of Biostatistics, University of Washington, Box 357232, Seattle, WA 98195, USAnrsimon@uw.edu.
          [2 ] Biometric Research Branch of the National Cancer Institute (at the National Institutes of Health), 9609 Medical Center Dr, Rockville, MD 20850, USA.
          Article
          3830632
          10.1093/biostatistics/kxw054
          28520893
          50af04ca-68bd-4295-85ed-47f73fb68ed9
          History

          Adaptive enrichment,Bayesian statistics,Clinical trials

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