Mahé C, Chevret S
Département de Biostatistique et Informatique Médicale, H pital St-Louis, Paris, France.
Biometrics. 1999 Dec;55(4):1078-84. doi: 10.1111/j.0006-341x.1999.01078.x.
Multivariate failure time data are frequently encountered in longitudinal studies when subjects may experience several events or when there is a grouping of individuals into a cluster. To take into account the dependence of the failure times within the unit (the individual or the cluster) as well as censoring, two multivariate generalizations of the Cox proportional hazards model are commonly used. The marginal hazard model is used when the purpose is to estimate mean regression parameters, while the frailty model is retained when the purpose is to assess the degree of dependence within the unit. We propose a new approach based on the combination of the two aforementioned models to estimate both these quantities. This two-step estimation procedure is quicker and more simple to implement than the EM algorithm used in frailty models estimation. Simulation results are provided to illustrate robustness, consistency, and large-sample properties of estimators. Finally, this method is exemplified on a diabetic retinopathy study in order to assess the effect of photocoagulation in delaying the onset of blindness as well as the dependence between the two eyes blindness times of a patient.
在纵向研究中,当个体可能经历多个事件或个体被分组到一个集群中时,经常会遇到多变量失效时间数据。为了考虑单位(个体或集群)内失效时间的依赖性以及删失情况,通常使用Cox比例风险模型的两种多变量推广。当目的是估计平均回归参数时,使用边际风险模型;而当目的是评估单位内的依赖程度时,则使用脆弱模型。我们提出了一种基于上述两种模型相结合的新方法来估计这两个量。这种两步估计程序比用于脆弱模型估计的EM算法更快且更易于实现。提供了模拟结果以说明估计量的稳健性、一致性和大样本性质。最后,在一项糖尿病视网膜病变研究中举例说明了该方法,以评估光凝治疗在延迟失明发作方面的效果以及患者双眼失明时间之间的依赖性。