Tapsoba Jean de Dieu, Chao Edward C, Wang Ching-Yun
Vaccine and Infectious Disease Division, Fred Hutchinson Cancer Research Center, Seattle, Washington 98109, U.S.A.
Data Numerica Institute, Bellevue, Washington 98006, U.S.A.
Int J Biostat. 2019 Apr 6;15(2):/j/ijb.2019.15.issue-2/ijb-2018-0028/ijb-2018-0028.xml. doi: 10.1515/ijb-2018-0028.
Many biomedical or epidemiological studies often aim to assess the association between the time to an event of interest and some covariates under the Cox proportional hazards model. However, a problem is that the covariate data routinely involve measurement error, which may be of classical type, Berkson type or a combination of both types. The issue of Cox regression with error-prone covariates has been well-discussed in the statistical literature, which has focused mainly on classical error so far. This paper considers Cox regression analysis when some covariates are possibly contaminated with a mixture of Berkson and classical errors. We propose a simulation extrapolation-based method to address this problem when two replicates of the mismeasured covariates are available along with calibration data for some subjects in a subsample only. The proposed method places no assumption on the mixture percentage. Its finite-sample performance is assessed through a simulation study. It is applied to the analysis of data from an AIDS clinical trial study.
许多生物医学或流行病学研究通常旨在评估在Cox比例风险模型下,感兴趣事件发生时间与一些协变量之间的关联。然而,一个问题是协变量数据通常存在测量误差,其可能是经典类型、伯克森类型或两种类型的组合。具有易出错协变量的Cox回归问题在统计文献中已有充分讨论,目前主要集中在经典误差方面。本文考虑当一些协变量可能同时受到伯克森误差和经典误差混合影响时的Cox回归分析。当仅在子样本中有部分受试者的校准数据,且可获得两次测量错误的协变量重复数据时,我们提出一种基于模拟外推的方法来解决此问题。所提出的方法对混合比例不做任何假设。通过模拟研究评估其有限样本性能。该方法应用于一项艾滋病临床试验研究的数据。