School of Statistics and Data Science, Nankai University, Tianjin, 300071, China.
Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, ON N2L 3G1, Canada.
Biostatistics. 2022 Jan 13;23(1):18-33. doi: 10.1093/biostatistics/kxaa011.
We develop methods for assessing the predictive accuracy of a given event time model when the validation sample is comprised of case $K$ interval-censored data. An imputation-based, an inverse probability weighted (IPW), and an augmented inverse probability weighted (AIPW) estimator are developed and evaluated for the mean prediction error and the area under the receiver operating characteristic curve when the goal is to predict event status at a landmark time. The weights used for the IPW and AIPW estimators are obtained by fitting a multistate model which jointly considers the event process, the recurrent assessment process, and loss to follow-up. We empirically investigate the performance of the proposed methods and illustrate their application in the context of a motivating rheumatology study in which human leukocyte antigen markers are used to predict disease progression status in patients with psoriatic arthritis.
我们开发了一种方法,用于评估在验证样本由 K 个病例区间删失数据组成的情况下,给定事件时间模型的预测准确性。当目标是预测 landmark 时间的事件状态时,我们开发并评估了基于插补、逆概率加权(Inverse Probability Weighted,简称 IPW)和增强逆概率加权(Augmented Inverse Probability Weighted,简称 AIPW)的估计器,用于平均预测误差和接收者操作特征曲线下的面积。用于 IPW 和 AIPW 估计器的权重是通过拟合一个多状态模型获得的,该模型联合考虑了事件过程、复发评估过程和随访丢失。我们通过实证研究来评估所提出的方法的性能,并在一个有动机的风湿病学研究的背景下说明其应用,该研究使用人类白细胞抗原标志物来预测银屑病关节炎患者的疾病进展状态。