Department of Computer Science and Statistics, University of Rhode Island, Kingston, 02881, Rhode Island, USA.
Department of Statistics, University of Connecticut, Storrs, 06269, Connecticut, USA.
Stat Med. 2023 Jun 30;42(14):2455-2474. doi: 10.1002/sim.9732. Epub 2023 Apr 4.
Due to the nature of study design or other reasons, the upper limits of the interval-censored data with multiple visits are unknown. A naïve approach is to treat the last observed time as the exact event time, which may induce biased estimators of the model parameters. In this paper, we first develop a Cox model with time-dependent covariates for the event time and a proportional hazards model with frailty for the gap time. We then construct the upper limits using the latent gap times to resolve the issue of interval-censored event time data with unknown upper limits. A data-augmentation technique and a Monte Carlo EM (MCEM) algorithm are developed to facilitate computation. Theoretical properties of the computational algorithm are also investigated. Additionally, new model comparison criteria are developed to assess the fit of the gap time data as well as the fit of the event time data conditional on the gap time data. Our proposed method compares favorably with competing methods in both simulation study and real data analysis.
由于研究设计或其他原因,多次就诊的区间删失数据的上限是未知的。一种简单的方法是将最后一次观察时间视为确切的事件时间,这可能会导致模型参数的有偏估计。在本文中,我们首先为事件时间开发了一个具有时变协变量的 Cox 模型,以及一个具有脆弱性的比例风险模型来处理间隔删失数据。然后,我们使用潜在的间隔时间来构建上限,以解决具有未知上限的区间删失事件时间数据的问题。我们开发了数据增强技术和蒙特卡罗 EM(MCEM)算法来方便计算。还研究了计算算法的理论性质。此外,还开发了新的模型比较标准来评估间隔时间数据的拟合情况以及在间隔时间数据条件下事件时间数据的拟合情况。我们的方法在模拟研究和实际数据分析中都优于竞争方法。