Chang Shu-Hui, Tzeng Shinn-Jia
Division of Biostatistics, Graduate Institute of Epidemiology, College of Public Health, National Taiwan University, 1 Jen-Ai Road, Section 1, Taipei, 10018, Taiwan.
Lifetime Data Anal. 2006 Mar;12(1):53-67. doi: 10.1007/s10985-005-7220-9.
In follow-up studies, survival data often include subjects who have had a certain event at recruitment and may potentially experience a series of subsequent events during the follow-up period. This kind of survival data collected under a cross-sectional sampling criterion is called truncated serial event data. The outcome variables of interest in this paper are serial sojourn times between successive events. To analyze the sojourn times in truncated serial event data, we need to confront two potential sampling biases arising simultaneously from a sampling criterion and induced informative censoring. In this study, nonparametric estimation of the joint probability function of serial sojourn times is developed by using inverse probabilities of the truncation and censoring times as weight functions to accommodate these two sampling biases under various situations of truncation and censoring. Relevant statistical properties of the proposed estimators are also discussed. Simulation studies and two real data are presented to illustrate the proposed methods.
在后续研究中,生存数据通常包括在招募时发生了某一特定事件且在随访期间可能经历一系列后续事件的受试者。在横断面抽样标准下收集的这类生存数据被称为截断序列事件数据。本文感兴趣的结果变量是连续事件之间的序列停留时间。为了分析截断序列事件数据中的停留时间,我们需要面对同时由抽样标准和诱导信息删失引起的两种潜在抽样偏差。在本研究中,通过使用截断时间和删失时间的逆概率作为权重函数,开发了序列停留时间联合概率函数的非参数估计,以适应截断和删失的各种情况下的这两种抽样偏差。还讨论了所提出估计量的相关统计性质。给出了模拟研究和两个实际数据来说明所提出的方法。