Multivariate outcomes are common in pragmatic cluster randomized trials. While sample size calculation procedures for multivariate outcomes exist under parallel assignment, none have been developed for a stepped wedge design. In this article, we present computationally efficient power and sample size procedures for stepped wedge cluster randomized trials (SW-CRTs) with multivariate outcomes that differentiate the within-period and between-period intracluster correlation coefficients (ICCs). Under a multivariate linear mixed model, we derive the joint distribution of the intervention test statistics which can be used for determining power under different hypotheses and provide an example using the commonly utilized intersection-union test for co-primary outcomes. Simplifications under a common treatment effect and common ICCs across endpoints and an extension to closed cohort designs are also provided. Finally, under the common ICC across endpoints assumption, we formally prove that the multivariate linear mixed model leads to a more efficient treatment effect estimator compared to the univariate linear mixed model, providing a rigorous justification on the use of the former with multivariate outcomes. We illustrate application of the proposed methods using data from an existing SW-CRT and present extensive simulations to validate the methods.
翻译:在务实的集群随机随机试验中,多变量结果是常见的。虽然在平行任务下存在多变量结果的抽样规模计算程序,但没有为加速的混合设计制定任何样本规模计算程序。在本条中,我们介绍分级混合随机试验(SW-CRTs)的计算效率强和样本规模程序,其中多变量结果区分了周期内和周期内集群内部相关系数。在多变量线性混合模式下,我们得出干预测试统计数据的联合分布,可用于在不同假设下确定权力,并用常用的交叉联合测试作为范例。在共同处理效果下进行简化,并在共同端点上使用通用的电算器,并扩展至封闭组设计。最后,根据共同的国际商会的跨端点假设,我们正式证明多变量线性混合模型导致一种更有效的治疗效果估计,与单变量线性混合模型相比,为使用前一种具有多变量的结果提供了严格的理由。我们用现有SWCRT和当前模拟方法的数据说明采用的拟议方法。