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A Phase I–II Basket Trial Design to Optimize Dose-Schedule Regimes Based on Delayed Outcomes

Ruitao Lin, Peter F. Thall, Ying Yuan

2020Bayesian Analysis17 citationsDOIOpen Access PDF

Abstract

This paper proposes a Bayesian adaptive basket trial design to optimize the dose-schedule regimes of an experimental agent within disease subtypes, called "baskets", for phase I-II clinical trials based on late-onset efficacy and toxicity. To characterize the association among the baskets and regimes, a Bayesian hierarchical model is assumed that includes a heterogeneity parameter, adaptively updated during the trial, that quantifies information shared across baskets. To account for late-onset outcomes when doing sequential decision making, unobserved outcomes are treated as missing values and imputed by exploiting early biomarker and low-grade toxicity information. Elicited joint utilities of efficacy and toxicity are used for decision making. Patients are randomized adaptively to regimes while accounting for baskets, with randomization probabilities proportional to the posterior probability of achieving maximum utility. Simulations are presented to assess the design's robustness and ability to identify optimal dose-schedule regimes within disease subtypes, and to compare it to a simplified design that treats the subtypes independently.

Topics & Concepts

Robustness (evolution)Bayesian probabilityScheduleComputer scienceEconometricsBayes' theoremPosterior probabilityClinical trialStatisticsMedicineMathematicsArtificial intelligenceInternal medicineGeneChemistryOperating systemBiochemistryStatistical Methods in Clinical TrialsOptimal Experimental Design MethodsAdvanced Multi-Objective Optimization Algorithms