Department of Statistics, Hebrew University, Mount Scopus, Jerusalem, Israel.
Departments of Epidemiology, Biostatistics, Nutrition and Global Health, Harvard T.H. Chan School of Public Health, Boston, MA, USA.
Biom J. 2020 Sep;62(5):1139-1163. doi: 10.1002/bimj.201800085. Epub 2020 Jan 31.
The Cox regression model is a popular model for analyzing the relationship between a covariate vector and a survival endpoint. The standard Cox model assumes a constant covariate effect across the entire covariate domain. However, in many epidemiological and other applications, the covariate of main interest is subject to a threshold effect: a change in the slope at a certain point within the covariate domain. Often, the covariate of interest is subject to some degree of measurement error. In this paper, we study measurement error correction in the case where the threshold is known. Several bias correction methods are examined: two versions of regression calibration (RC1 and RC2, the latter of which is new), two methods based on the induced relative risk under a rare event assumption (RR1 and RR2, the latter of which is new), a maximum pseudo-partial likelihood estimator (MPPLE), and simulation-extrapolation (SIMEX). We develop the theory, present simulations comparing the methods, and illustrate their use on data concerning the relationship between chronic air pollution exposure to particulate matter PM and fatal myocardial infarction (Nurses Health Study (NHS)), and on data concerning the effect of a subject's long-term underlying systolic blood pressure level on the risk of cardiovascular disease death (Framingham Heart Study (FHS)). The simulations indicate that the best methods are RR2 and MPPLE.
Cox 回归模型是一种分析协变量向量与生存终点之间关系的流行模型。标准的 Cox 模型假设整个协变量域内的协变量效应是恒定的。然而,在许多流行病学和其他应用中,主要感兴趣的协变量受到阈值效应的限制:在协变量域内的某个点斜率发生变化。通常,感兴趣的协变量受到一定程度的测量误差的影响。在本文中,我们研究了在阈值已知的情况下的测量误差修正。我们研究了几种偏差修正方法:两种回归校准版本(RC1 和 RC2,后者是新的)、两种基于罕见事件假设下的诱导相对风险的方法(RR1 和 RR2,后者是新的)、最大拟似然估计量(MPPLE)和模拟外推法(SIMEX)。我们提出了理论,进行了比较方法的模拟,并将其应用于慢性空气污染暴露于颗粒物 PM 和致命性心肌梗死(护士健康研究(NHS))之间关系的数据,以及长期潜在的收缩压水平对心血管疾病死亡风险的影响(弗雷明汉心脏研究(FHS))的数据。模拟表明,最好的方法是 RR2 和 MPPLE。