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Assessing covariate effects using Jeffreys-type prior in the Cox model in the presence of a monotone partial likelihood

机译:在存在单调偏似似性的情况下在Cox模型中使用Jeffreys-priority评估协变量效应

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摘要

In medical studies, the monotone partial likelihood is frequently encountered in the analysis of time-to-event data using the Cox model. For example, with a binary covariate, the subjects can be classified into two groups. If the event of interest does not occur (zero event) for all the subjects in one of the groups, the resulting partial likelihood is monotone and consequently, the covariate effects are difficult to estimate. In this article, we develop both Bayesian and frequentist approaches using a data-dependent Jeffreys-type prior to handle the monotone partial likelihood problem. We first carry out an in-depth examination of the conditions of the monotone partial likelihood and then characterize sufficient and necessary conditions for the propriety of the Jeffreys-type prior. We further study several theoretical properties of the Jeffreys-type prior for the Cox model. In addition, we propose two variations of the Jeffreys-type prior: the shifted Jeffreys-type prior and the Jeffreys-type prior based on the first risk set. An efficient Markov-chain Monte Carlo algorithm is developed to carry out posterior computation. We perform extensive simulations to examine the performance of parameter estimates and demonstrate the applicability of the proposed method by analyzing real data from the SEER prostate cancer study.
机译:在医学研究中,在使用Cox模型分析事件时间数据时经常遇到单调部分可能性。例如,使用二元协变量,可以将受试者分为两组。如果对于一组中的所有对象都没有发生感兴趣的事件(零事件),则得到的部分可能性是单调的,因此,协变量效应很难估计。在本文中,我们先使用数据依赖的Jeffreys类型开发贝叶斯方法和频率论方法,然后再处理单调偏似然问题。我们首先对单调部分似然的条件进行深入研究,然后为Jeffreys型先验的适当性刻画充分和必要的条件。我们进一步研究了Cox模型之前Jeffreys型的几种理论性质。此外,我们根据第一个风险集提出了Jeffreys型先验的两种变体:移位的Jeffreys型先验和Jeffreys型先验。提出了一种有效的马尔可夫链蒙特卡罗算法来进行后验计算。我们进行了广泛的模拟,以检查参数估计的性能,并通过分析来自SEER前列腺癌研究的真实数据来证明所提出方法的适用性。

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