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Estimating Piecewise Exponential Frailty Model With Changing Prior for Baseline Hazard Function

机译:基线危险功能改变估算分段指数脆弱模型

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Piecewise exponential models provide a very flexible framework for modelling univariate survival data. It can be used to estimate the effects of different covariates which are influenced by the survival data. Although in a strict sense it is a parametric model, a piecewise exponential hazard can approximate any shape of a parametric baseline hazard. In the parametric baseline hazard, the hazard function for each individual may depend on a set of risk factors or explanatory variables. However, it usually does not explain all such variables which are known or measurable, and these variables become interesting to be considered. This unknown and unobservable risk factor of the hazard function is often termed as the individual's heterogeneity or frailty. This paper analyses the effects of unobserved population heterogeneity in patients' survival times. The issue of model choice through variable selection is also considered. A sensitivity analysis is conducted to assess the influence of the prior for each parameter. We used the Markov Chain Monte Carlo method in computing the Bayesian estimator on kidney infection data. The results obtained show that the sex and frailty are substantially associated with survival in this study and the models are relatively quite sensitive to the choice of two different priors.
机译:分段指数模型提供了一种非常灵活的框架,用于建模单变量生存数据。它可用于估计不同协变量的影响,这些协变量受到生存数据影响的影响。虽然在严格意义上是一个参数模型,但是分段指数危险可以近似参数基线危险的任何形状。在参数基线危险中,每个人的危险功能可能取决于一组风险因素或解释性变量。然而,它通常不会解释已知或可测量的所有这种变量,并且这些变量被认为是有趣的。这种未知和不可观察的危险功能的风险因素通常被称为个人的异质性或脆弱。本文分析了患者存活时间的未观察到群体异质性的影响。还考虑了通过可变选择的模型选择问题。进行敏感性分析以评估每个参数的影响。我们使用Markov Chain Monte Carlo方法在肾脏感染数据上计算贝叶斯估计器。得到的结果表明,性别和脆弱基本上与本研究中生存率相关,并且模型对两个不同的前瞻性的选择相对敏感。

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