Zhong Yujie, Cook Richard J
Department of Statistics and Actuarial Science, University of Waterloo, 200 University Avenue West, Waterloo, N2L 3G1, ON, Canada.
Stat Med. 2015 Mar 15;34(6):901-23. doi: 10.1002/sim.6395. Epub 2014 Dec 17.
In cluster-randomized trials, intervention effects are often formulated by specifying marginal models, fitting them under a working independence assumption, and using robust variance estimates to address the association in the responses within clusters. We develop sample size criteria within this framework, with analyses based on semiparametric Cox regression models fitted with event times subject to right censoring. At the design stage, copula models are specified to enable derivation of the asymptotic variance of estimators from a marginal Cox regression model and to compute the number of clusters necessary to satisfy power requirements. Simulation studies demonstrate the validity of the sample size formula in finite samples for a range of cluster sizes, censoring rates, and degrees of within-cluster association among event times. The power and relative efficiency implications of copula misspecification is studied, as well as the effect of within-cluster dependence in the censoring times. Sample size criteria and other design issues are also addressed for the setting where the event status is only ascertained at periodic assessments and times are interval censored.
在整群随机试验中,干预效果通常通过指定边际模型、在工作独立性假设下拟合这些模型,并使用稳健方差估计来处理整群内反应之间的关联性来确定。我们在此框架内制定样本量标准,分析基于拟合右删失事件时间的半参数Cox回归模型。在设计阶段,指定copula模型以推导边际Cox回归模型估计量的渐近方差,并计算满足检验效能要求所需的整群数量。模拟研究表明,对于一系列整群大小、删失率和事件时间内整群关联程度,样本量公式在有限样本中是有效的。研究了copula模型误设对检验效能和相对效率的影响,以及删失时间内整群依赖性的影响。对于仅在定期评估时确定事件状态且时间为区间删失的情况,也讨论了样本量标准和其他设计问题。