Zou Baiming, Jin Bo, Koch Gary G, Zhou Haibo, Borst Stephen E, Menon Sandeep, Shuster Jonathan J
Department of Biostatistics, University of Florida, Gainesville, FL 32611, U.S.A.
Stat Med. 2015 May 10;34(10):1621-33. doi: 10.1002/sim.6414. Epub 2015 Jan 23.
Repeated measurement designs have been widely used in various randomized controlled trials for evaluating long-term intervention efficacies. For some clinical trials, the primary research question is how to compare two treatments at a fixed time, using a t-test. Although simple, robust, and convenient, this type of analysis fails to utilize a large amount of collected information. Alternatively, the mixed-effects model is commonly used for repeated measurement data. It models all available data jointly and allows explicit assessment of the overall treatment effects across the entire time spectrum. In this paper, we propose an analytic strategy for longitudinal clinical trial data where the mixed-effects model is coupled with a model selection scheme. The proposed test statistics not only make full use of all available data but also utilize the information from the optimal model deemed for the data. The performance of the proposed method under various setups, including different data missing mechanisms, is evaluated via extensive Monte Carlo simulations. Our numerical results demonstrate that the proposed analytic procedure is more powerful than the t-test when the primary interest is to test for the treatment effect at the last time point. Simulations also reveal that the proposed method outperforms the usual mixed-effects model for testing the overall treatment effects across time. In addition, the proposed framework is more robust and flexible in dealing with missing data compared with several competing methods. The utility of the proposed method is demonstrated by analyzing a clinical trial on the cognitive effect of testosterone in geriatric men with low baseline testosterone levels.
重复测量设计已广泛应用于各类随机对照试验中,以评估长期干预效果。对于一些临床试验而言,主要研究问题是如何在固定时间使用t检验比较两种治疗方法。尽管这种分析方法简单、稳健且便捷,但它未能利用大量收集到的信息。相比之下,混合效应模型常用于重复测量数据。它对所有可用数据进行联合建模,并允许明确评估整个时间范围内的总体治疗效果。在本文中,我们提出了一种针对纵向临床试验数据的分析策略,其中混合效应模型与模型选择方案相结合。所提出的检验统计量不仅充分利用了所有可用数据,还利用了为数据选定的最优模型中的信息。通过广泛的蒙特卡罗模拟评估了所提出方法在各种设置下的性能,包括不同的数据缺失机制。我们的数值结果表明,当主要兴趣在于检验最后一个时间点的治疗效果时,所提出的分析程序比t检验更具功效。模拟还表明,所提出的方法在检验整个时间范围内的总体治疗效果方面优于常用的混合效应模型。此外,与几种竞争方法相比,所提出的框架在处理缺失数据方面更稳健、更灵活。通过分析一项关于睾酮对基线睾酮水平较低的老年男性认知影响的临床试验,证明了所提出方法的实用性。