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Designing three-level cluster randomized trials to assess treatment effect heterogeneity

Fan Li, Xinyuan Chen, Zizhong Tian, Denise Esserman, Patrick J. Heagerty, Rui Wang

2022Biostatistics16 citationsDOIOpen Access PDF

Abstract

Cluster randomized trials often exhibit a three-level structure with participants nested in subclusters such as health care providers, and subclusters nested in clusters such as clinics. While the average treatment effect has been the primary focus in planning three-level randomized trials, interest is growing in understanding whether the treatment effect varies among prespecified patient subpopulations, such as those defined by demographics or baseline clinical characteristics. In this article, we derive novel analytical design formulas based on the asymptotic covariance matrix for powering confirmatory analyses of treatment effect heterogeneity in three-level trials, that are broadly applicable to the evaluation of cluster-level, subcluster-level, and participant-level effect modifiers and to designs where randomization can be carried out at any level. We characterize a nested exchangeable correlation structure for both the effect modifier and the outcome conditional on the effect modifier, and generate new insights from a study design perspective for conducting analyses of treatment effect heterogeneity based on a linear mixed analysis of covariance model. A simulation study is conducted to validate our new methods and two real-world trial examples are used for illustrations.

Topics & Concepts

Analysis of covarianceRandomized controlled trialObservational studyStatisticsCluster (spacecraft)RandomizationCovarianceTreatment effectEconometricsCluster randomised controlled trialStatistical powerClinical trialMathematicsComputer scienceMedicineInternal medicineTraditional medicineProgramming languageAdvanced Causal Inference TechniquesStatistical Methods in Clinical TrialsStatistical Methods and Bayesian Inference