Generalized phase I-II designs to increase long term therapeutic success rate |
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Authors: | Peter F. Thall Yong Zang Ying Yuan |
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Affiliation: | 1. Department of Biostatistics, M.D. Anderson Cancer Center, Houston, Texas, USA;2. Department of Biostatistics and Health Data Science, Center for Computational Biology and Bioinformatics, Indiana University, Indianapolis, Indiana, USA |
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Abstract: | ![]() Designs for early phase dose finding clinical trials typically are either phase I based on toxicity, or phase I-II based on toxicity and efficacy. These designs rely on the implicit assumption that the dose of an experimental agent chosen using these short-term outcomes will maximize the agent's long-term therapeutic success rate. In many clinical settings, this assumption is not true. A dose selected in an early phase oncology trial may give suboptimal progression-free survival or overall survival time, often due to a high rate of relapse following response. To address this problem, a new family of Bayesian generalized phase I-II designs is proposed. First, a conventional phase I-II design based on short-term outcomes is used to identify a set of candidate doses, rather than selecting one dose. Additional patients then are randomized among the candidates, patients are followed for a predefined longer time period, and a final dose is selected to maximize the long-term therapeutic success rate, defined in terms of duration of response. Dose-specific sample sizes in the randomization are determined adaptively to obtain a desired level of selection reliability. The design was motivated by a phase I-II trial to find an optimal dose of natural killer cells as targeted immunotherapy for recurrent or treatment-resistant B-cell hematologic malignancies. A simulation study shows that, under a range of scenarios in the context of this trial, the proposed design has much better performance than two conventional phase I-II designs. |
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Keywords: | Bayesian design cell therapy dose finding phase I-II clinical trial |
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