4.5 Article

Sample size requirements for testing treatment effect heterogeneity in cluster randomized trials with binary outcomes

期刊

STATISTICS IN MEDICINE
卷 -, 期 -, 页码 -

出版社

WILEY
DOI: 10.1002/sim.9901

关键词

effect modification; generalized linear mixed model; group randomized trial; intracluster correlation coefficient; Monte Carlo method; unequal cluster sizes

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This study proposes a method for testing treatment effect heterogeneity in cluster randomized trials. Through a generalized linear mixed model, we derive sample size expressions for binary effect modifiers and develop a computationally efficient Monte Carlo approach for continuous effect modifiers. Our findings contribute to filling the methodological gap in existing research.
Cluster randomized trials (CRTs) refer to a popular class of experiments in which randomization is carried out at the group level. While methods have been developed for planning CRTs to study the average treatment effect, and more recently, to study the heterogeneous treatment effect, the development for the latter objective has currently been limited to a continuous outcome. Despite the prevalence of binary outcomes in CRTs, determining the necessary sample size and statistical power for detecting differential treatment effects in CRTs with a binary outcome remain unclear. To address this methodological gap, we develop sample size procedures for testing treatment effect heterogeneity in two-level CRTs under a generalized linear mixed model. Closed-form sample size expressions are derived for a binary effect modifier, and in addition, a computationally efficient Monte Carlo approach is developed for a continuous effect modifier. Extensions to multiple effect modifiers are also discussed. We conduct simulations to examine the accuracy of the proposed sample size methods. We present several numerical illustrations to elucidate features of the proposed formulas and to compare our method to the approximate sample size calculation under a linear mixed model. Finally, we use data from the Strategies and Opportunities to Stop Colon Cancer in Priority Populations (STOP CRC) CRT to illustrate the proposed sample size procedure for testing treatment effect heterogeneity.

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