Jung Sin-Ho, Ahn Chul W
Department of Biostatistics and Bioinformatics, Duke University, Durham, NC 27705, USA.
Stat Med. 2005 Sep 15;24(17):2583-96. doi: 10.1002/sim.2136.
Controlled clinical trials often randomize subjects to two treatment groups and repeatedly evaluate them at baseline and intervals across a treatment period of fixed duration. A popular primary objective in these trials is to compare the change rates in the repeated measurements between treatment groups. Repeated measurements usually involve missing data and a serial correlation within each subject. The generalized estimating equation (GEE) method has been widely used to fit the time trend in repeated measurements because of its robustness to random missing and mispecification of the true correlation structure. In this paper, we propose a closed form sample size formula for comparing the change rates of binary repeated measurements using GEE for a two-group comparison. The sample size formula is derived incorporating missing patterns, such as independent missing and monotone missing, and correlation structures, such as AR(1) model. We also propose an algorithm to generate correlated binary data with arbitrary marginal means and a Markov dependency and use it in simulation studies.
对照临床试验通常将受试者随机分为两个治疗组,并在基线期以及固定疗程的治疗期间按一定间隔对他们进行反复评估。这些试验中一个常见的主要目标是比较治疗组之间重复测量的变化率。重复测量通常涉及缺失数据以及每个受试者内部的序列相关性。广义估计方程(GEE)方法因其对随机缺失和真实相关结构的错误设定具有稳健性,已被广泛用于拟合重复测量中的时间趋势。在本文中,我们提出了一个封闭形式的样本量公式,用于使用GEE比较两组二元重复测量的变化率以进行两组比较。该样本量公式是结合缺失模式(如独立缺失和单调缺失)以及相关结构(如AR(1)模型)推导得出的。我们还提出了一种算法来生成具有任意边际均值和马尔可夫相依性的相关二元数据,并将其用于模拟研究。