Cluster randomized trials (CRTs) are studies where treatment is randomized at the cluster level but outcomes are typically collected at the individual level. When CRTs are employed in pragmatic settings, baseline population characteristics may moderate treatment effects, leading to what is known as heterogeneous treatment effects (HTEs). Pre-specified, hypothesis-driven HTE analyses in CRTs can enable an understanding of how interventions may impact subpopulation outcomes. While closed-form sample size formulas have recently been proposed, assuming known intracluster correlation coefficients (ICCs) for both the covariate and outcome, guidance on optimal cluster randomized designs to ensure maximum power with pre-specified HTE analyses has not yet been developed. We derive new design formulas to determine the cluster size and number of clusters to achieve the locally optimal design (LOD) that minimizes variance for estimating the HTE parameter given a budget constraint. Given the LODs are based on covariate and outcome-ICC values that are usually unknown, we further develop the maximin design for assessing HTE, identifying the combination of design resources that maximize the relative efficiency of the HTE analysis in the worst case scenario. In addition, given the analysis of the average treatment effect is often of primary interest, we also establish optimal designs to accommodate multiple objectives by combining considerations for studying both the average and heterogeneous treatment effects. We illustrate our methods using the context of the Kerala Diabetes Prevention Program CRT, and provide an R Shiny app to facilitate calculation of optimal designs under a wide range of design parameters.
翻译:聚类随机试验(CRTs)是分组一级随机处理的研究,但结果通常在单个级别上收集。当聚类试验在务实环境中使用时,基线人口特征可能会产生中度处理效果,导致所谓的异式处理效果(HTEs),在聚类审查中,预先指定、假设驱动的HTE分析可以使人们了解干预措施如何影响亚人口结果。最近提出了封闭式样本规模公式,假设已知的群类内部相关系数(ICCs)对共变和结果都是如此,但关于最佳集类随机设计的指导尚未制定,以确保使用预先确定的HTE分析参数的最大能力。我们提出了新的设计公式,以确定组群规模大小和组数目,从而实现当地最佳处理效果(HTE参数)。由于预算限制,预先指定、假设驱动的HTE参数分析可以最大限度地减少估计亚特变异性参数的差异。虽然最近提出了封闭式样本规模公式的公式是通常未知的,但我们进一步制定了评估高频和结果的最佳设计,确定了设计资源组合,以便在最坏的案例中最大限度地实现HTE分析。此外,我们还利用了最优性设计模型模型分析了我们的最佳设计方法,我们利用了最佳的汇率分析。