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首页> 外文期刊>Journal of the American statistical association >Cox Models With Smooth Functional Effect of Covariates Measured With Error
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Cox Models With Smooth Functional Effect of Covariates Measured With Error

机译:具有误差的协变量平滑函数效应的Cox模型

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摘要

We propose, develop, and implement a fully Bayesian inferential approach for the Cox model when the log hazard function contains unknown smooth functions of the variables measured with error. Our approach is to model nonparametrically both the log-baseline hazard and the smooth components of the log-hazard functions using low-rank penalized splines. Careful implementation of the Bayesian inferential machinery is shown to produce remarkably better results than the naive approach. Our methodology was motivated by and applied to the study of progression time to chronic kidney disease as a function of baseline kidney function and applied to the Atherosclerosis Risk in Communities study, a large epidemiological cohort study. This article has supplementary material online.
机译:当对数风险函数包含用误差测量的变量的未知平滑函数时,我们为Cox模型提出,开发和实施完全贝叶斯推理方法。我们的方法是使用低阶惩罚样条对参数对数基线风险和对数风险函数的平滑分量进行非参数建模。与朴素的方法相比,精心实施贝叶斯推理机可产生明显更好的结果。我们的方法是由慢性肾脏疾病的进展时间作为基线肾脏功能的函数而激发的,并被应用到该研究中,并被应用于大型流行病学队列研究社区中的动脉粥样硬化风险。本文在线提供了补充材料。

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