Lu Shou-En, Wang Mei-Cheng
Division of Biometrics, School of Public Health, University of Medicine and Dentistry of New Jersey, 683 Hoes Lane West, Piscataway, NJ 08854, USA.
Lifetime Data Anal. 2005 Mar;11(1):61-79. doi: 10.1007/s10985-004-5640-6.
Clustered failure time data are commonly encountered in biomedical research where the study subjects from the same cluster (e.g., family) share the common genetic and/or environmental factors such that the failure times within the same cluster are correlated. Two approaches that are commonly used to account for the intra-cluster association are frailty models and marginal models. In this paper, we study the marginal proportional hazards model, where the structure of dependence between individuals within a cluster is unspecified. An estimation procedure is developed based on a pseudo-likelihood approach, and a risk set sampling method is proposed for the formulation of the pseudo-likelihood. The asymptotic properties of the proposed estimators are studied, and the related issues regarding the statistical efficiencies are discussed. The performances of the proposed estimator are demonstrated by the simulation studies. A data example from a child vitamin A supplementation trial in Nepal (Nepal Nutrition Intervention Project-Sarlahi, or NNIPS) is used to illustrate this methodology.
聚类失效时间数据在生物医学研究中经常遇到,在这类研究中,来自同一聚类(如家庭)的研究对象共享共同的遗传和/或环境因素,使得同一聚类内的失效时间具有相关性。通常用于考虑聚类内关联的两种方法是脆弱模型和边际模型。在本文中,我们研究边际比例风险模型,其中聚类内个体之间的依赖结构未明确指定。基于拟似然方法开发了一种估计程序,并提出了一种风险集抽样方法来构建拟似然。研究了所提出估计量的渐近性质,并讨论了与统计效率相关的问题。通过模拟研究展示了所提出估计量的性能。使用来自尼泊尔儿童维生素A补充试验(尼泊尔营养干预项目 - 萨拉希,或NNIPS)的数据示例来说明这种方法。