Zhang Zhigang, Sun Liuquan, Sun Jianguo, Finkelstein Dianne M
Department of Statistics, 301 Mathematical Sciences Building, Oklahoma State University, Stillwater, OK 74078, USA.
Stat Med. 2007 May 30;26(12):2533-46. doi: 10.1002/sim.2721.
Interval censoring arises when a subject misses prescheduled visits at which the failure is to be assessed. Most existing approaches for analysing interval-censored failure time data assume that the censoring mechanism is independent of the true failure time. However, there are situations where this assumption may not hold. In this paper, we consider such a situation in which the dependence structure between the censoring variables and the failure time can be modelled through some latent variables and a method for regression analysis of failure time data is proposed. The method makes use of the proportional hazards frailty model and an EM algorithm is presented for estimation. Finite sample properties of the proposed estimators of regression parameters are examined through simulation studies and we illustrate the method with data from an AIDS study.
当受试者错过预定的用于评估失败情况的访视时,就会出现区间删失。大多数现有的分析区间删失失效时间数据的方法都假定删失机制与真实失效时间无关。然而,在某些情况下,这一假定可能不成立。在本文中,我们考虑这样一种情形,即删失变量与失效时间之间的依赖结构可以通过一些潜在变量进行建模,并提出了一种失效时间数据的回归分析方法。该方法利用了比例风险脆弱模型,并给出了一种用于估计的期望最大化(EM)算法。通过模拟研究检验了所提出的回归参数估计量的有限样本性质,并用一项艾滋病研究的数据对该方法进行了说明。