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Bayesian treatment screening and selection using subgroup-specific utilities of response and toxicity
Authors:Juhee Lee  Peter F Thall  Pavlos Msaouel
Institution:1. Department of Statistics, Baskin School of Engineering, University of California Santa Cruz, Santa Cruz, California, USA;2. Department of Biostatistics, M.D. Anderson Cancer Center, Houston, Texas, USA;3. Departments of Genitourinary Medical Oncology and Translational Molecular Pathology, M.D. Anderson Cancer Center, Houston, Texas, USA
Abstract:A Bayesian design is proposed for randomized phase II clinical trials that screen multiple experimental treatments compared to an active control based on ordinal categorical toxicity and response. The underlying model and design account for patient heterogeneity characterized by ordered prognostic subgroups. All decision criteria are subgroup specific, including interim rules for dropping unsafe or ineffective treatments, and criteria for selecting optimal treatments at the end of the trial. The design requires an elicited utility function of the two outcomes that varies with the subgroups. Final treatment selections are based on posterior mean utilities. The methodology is illustrated by a trial of targeted agents for metastatic renal cancer, which motivated the design methodology. In the context of this application, the design is evaluated by computer simulation, including comparison to three designs that conduct separate trials within subgroups, or conduct one trial while ignoring subgroups, or base treatment selection on estimated response rates while ignoring toxicity.
Keywords:Bayesian design  clustering  patient prognostic subgroups  treatment screening design  utility function
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