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A Bayesian Approach for the Cox Proportional Hazards Model with Covariates Subject to Detection Limit

机译:服从检测极限的协变量的Cox比例风险模型的贝叶斯方法

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摘要

The research on biomarkers has been limited in its effectiveness because biomarker levels can only be measured within the thresholds of assays and laboratory instruments, a challenge referred to as a detection limit (DL) problem. In this paper, we propose a Bayesian approach to the Cox proportional hazards model with explanatory variables subject to lower, upper, or interval DLs. We demonstrate that by formulating the time-to-event outcome using the Poisson density with counting process notation, implementing the proposed approach in the OpenBUGS and JAGS is straightforward. We have conducted extensive simulations to compare the proposed Bayesian approach to the other four commonly used methods and to evaluate its robustness with respect to the distribution assumption of the biomarkers. The proposed Bayesian approach and other methods were applied to an acute lung injury study, in which a panel of cytokine biomarkers was studied for the biomarkers’ association with ventilation-free survival.
机译:由于只能在测定法和实验室仪器的阈值内测量生物标志物的水平,因此对生物标志物的研究一直受到限制,这是一个挑战,称为检测限(DL)问题。在本文中,我们提出了一种Cox比例风险模型的贝叶斯方法,其解释变量受下限,上限或区间DL的影响。我们证明,通过使用带有计数过程符号的泊松密度来表示事件到达时间的结果,在OpenBUGS和JAGS中实施所提出的方法非常简单。我们进行了广泛的模拟,以将提出的贝叶斯方法与其他四种常用方法进行比较,并评估其在生物标志物分布假设方面的稳健性。拟议的贝叶斯方法和其他方法被用于急性肺损伤研究,在该研究中,研究了一组细胞因子生物标志物,以研究生物标志物与无通气生存的关系。

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