Subgroup-Based Adaptive (SUBA) Designs for Multi-arm Biomarker Trials
Yanxun Xu,
Lorenzo Trippa,
Peter Müller and
Yuan Ji ()
Additional contact information
Yanxun Xu: The University of Texas at Austin
Lorenzo Trippa: Harvard School of Public Health
Peter Müller: The University of Texas at Austin
Yuan Ji: NorthShore University Health System
Statistics in Biosciences, 2016, vol. 8, issue 1, No 9, 159-180
Abstract:
Abstract Targeted therapies based on biomarker profiling are becoming a mainstream direction of cancer research and treatment. Depending on the expression of specific prognostic biomarkers, targeted therapies assign different cancer drugs to subgroups of patients even if they are diagnosed with the same type of cancer by traditional means, such as tumor location. For example, Herceptin is only indicated for the subgroup of patients with HER2+ breast cancer, but not other types of breast cancer. However, subgroups like HER2+ breast cancer with effective targeted therapies are rare, and most cancer drugs are still being applied to large patient populations that include many patients who might not respond or benefit. Also, the response to targeted agents in humans is usually unpredictable. To address these issues, we propose subgroup-based adaptive (SUBA), designs that simultaneously search for prognostic subgroups and allocate patients adaptively to the best subgroup-specific treatments throughout the course of the trial. The main features of SUBA include the continuous reclassification of patient subgroups based on a random partition model and the adaptive allocation of patients to the best treatment arm based on posterior predictive probabilities. We compare the SUBA design with three alternative designs including equal randomization, outcome-adaptive randomization, and a design based on a probit regression. In simulation studies, we find that SUBA compares favorably against the alternatives.
Keywords: Adaptive designs; Bayesian inference; Biomarkers; Posterior; Subgroup identification; Targeted therapies (search for similar items in EconPapers)
Date: 2016
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DOI: 10.1007/s12561-014-9117-1
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