4.4 Article

Optimizing a Bayesian hierarchical adaptive platform trial design for stroke patients

期刊

TRIALS
卷 23, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s13063-022-06664-4

关键词

Platform trial design; Bayesian models; Hierarchical models; Response-adaptive randomization; Beta-binomial

资金

  1. CTSA grant from NCATS [UL1TR002366]

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Platform trials based on Bayesian designs can effectively investigate multiple treatment arms on heterogeneous patient populations. The proposed approach using hierarchical modeling, response-adaptive randomization, and adjustment for potential drift over time achieved high statistical power, good patient benefit, and robustness against population drift over time. This design strikes a balance between traditional RAR scheme and fixed allocation, making it a promising choice for dichotomous outcomes trials investigating multiple subgroups.
Background Platform trials are well-known for their ability to investigate multiple arms on heterogeneous patient populations and their flexibility to add/drop treatment arms due to efficacy/lack of efficacy. Because of their complexity, it is important to develop highly optimized, transparent, and rigorous designs that are cost-efficient, offer high statistical power, maximize patient benefit, and are robust to changes over time. Methods To address these needs, we present a Bayesian platform trial design based on a beta-binomial model for binary outcomes that uses three key strategies: (1) hierarchical modeling of subgroups within treatment arms that allows for borrowing of information across subgroups, (2) utilization of response-adaptive randomization (RAR) schemes that seek a tradeoff between statistical power and patient benefit, and (3) adjustment for potential drift over time. Motivated by a proposed clinical trial that aims to find the appropriate treatment for different subgroup populations of ischemic stroke patients, extensive simulation studies were performed to validate the approach, compare different allocation rules, and study the model operating characteristics. Results and conclusions Our proposed approach achieved high statistical power and good patient benefit and was also robust against population drift over time. Our design provided a good balance between the strengths of both the traditional RAR scheme and fixed 1:1 allocation and may be a promising choice for dichotomous outcomes trials investigating multiple subgroups.

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