Liu Lei, Huang Xuelin, O'Quigley John
Division of Biostatistics and Epidemiology, Department of Public Health Sciences, University of Virginia, Charlottesville, Virginia 22908-0717, U.S.A.
Department of Biostatistics, M.D. Anderson Cancer Center, University of Texas, Houston, Texas 77030, U.S.A.
Biometrics. 2008 Sep;64(3):950-958. doi: 10.1111/j.1541-0420.2007.00954.x. Epub 2007 Dec 20.
In longitudinal observational studies, repeated measures are often taken at informative observation times. Also, there may exist a dependent terminal event such as death that stops the follow-up. For example, patients in poorer health are more likely to seek medical treatment and their medical cost for each visit tends to be higher. They are also subject to a higher mortality rate. In this article, we propose a random effects model of repeated measures in the presence of both informative observation times and a dependent terminal event. Three submodels are used, respectively, for (1) the intensity of recurrent observation times, (2) the amount of repeated measure at each observation time, and (3) the hazard of death. Correlated random effects are incorporated to join the three submodels. The estimation can be conveniently accomplished by Gaussian quadrature techniques, e.g., SAS Proc NLMIXED. An analysis of the cost-accrual process of chronic heart failure patients from the clinical data repository at the University of Virginia Health System is presented to illustrate the proposed method.
在纵向观察性研究中,通常会在信息丰富的观察时间点进行重复测量。此外,可能存在诸如死亡等依赖型终末事件,从而终止随访。例如,健康状况较差的患者更有可能寻求医疗治疗,且他们每次就诊的医疗费用往往更高。他们的死亡率也更高。在本文中,我们提出了一种在存在信息丰富的观察时间点和依赖型终末事件的情况下的重复测量随机效应模型。分别使用三个子模型来处理:(1) 重复观察时间的强度,(2) 每个观察时间点的重复测量量,以及 (3) 死亡风险。纳入相关随机效应以连接这三个子模型。估计可以通过高斯求积技术方便地完成,例如SAS Proc NLMIXED。本文给出了对弗吉尼亚大学健康系统临床数据存储库中慢性心力衰竭患者费用累积过程的分析,以说明所提出的方法。