School of Mathematics, Jilin University, Changchun, China.
School of Economics and Statistics, Guangzhou University, Guangzhou, China.
Stat Med. 2023 Jun 30;42(14):2293-2310. doi: 10.1002/sim.9724. Epub 2023 Mar 31.
Length-biased data occur often in many scientific fields, including clinical trials, epidemiology surveys and genome-wide association studies, and many methods have been proposed for their analysis under various situations. In this article, we consider the situation where one faces length-biased and partly interval-censored failure time data under the proportional hazards model, for which it does not seem to exist an established method. For the estimation, we propose an efficient nonparametric maximum likelihood method by incorporating the distribution information of the observed truncation times. For the implementation of the method, a flexible and stable EM algorithm via two-stage data augmentation is developed. By employing the empirical process theory, we establish the asymptotic properties of the resulting estimators. A simulation study conducted to assess the finite-sample performance of the proposed method suggests that it works well and is more efficient than the conditional likelihood approach. An application to an AIDS cohort study is also provided.
在许多科学领域,包括临床试验、流行病学调查和全基因组关联研究中,经常会出现长度偏倚数据。针对各种情况下的分析,已经提出了许多方法。本文考虑了在比例风险模型下,面对长度偏倚和部分区间删失失效时间数据的情况,对于这种情况,似乎不存在一种既定的方法。对于估计,我们通过纳入观测截断时间的分布信息,提出了一种有效的非参数最大似然方法。为了实现该方法,我们通过两阶段数据扩充开发了一种灵活且稳定的 EM 算法。通过使用经验过程理论,我们建立了所得估计量的渐近性质。一项旨在评估所提出方法的有限样本性能的模拟研究表明,该方法效果良好,比条件似然方法更有效。我们还提供了一个 AIDS 队列研究的应用案例。