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Modeling bivariate survival data using shared inverse Gaussian frailty model

机译:使用共享逆高斯脆弱模型建模双变量生存数据

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摘要

The shared frailty models are often used to model heterogeneity in survival analysis. The most common shared frailty model is a model in which hazard function is a product of a random factor (frailty) and the baseline hazard function which is common to all individuals. There are certain assumptions about the baseline distribution and the distribution of frailty. In this paper, we consider inverse Gaussian distribution as frailty distribution and three different baseline distributions, namely the generalized Rayleigh, the weighted exponential, and the extended Weibull distributions. With these three baseline distributions, we propose three different inverse Gaussian shared frailty models. We also compare these models with the models where the above-mentioned distributions are considered without frailty. We develop the Bayesian estimation procedure using Markov Chain Monte Carlo (MCMC) technique to estimate the parameters involved in these models. We present a simulation study to compare the true values of the parameters with the estimated values. A search of the literature suggests that currently no work has been done for these three baseline distributions with a shared inverse Gaussian frailty so far. We also apply these three models by using a real-life bivariate survival data set of McGilchrist and Aisbett (1991) related to the kidney infection data and a better model is suggested for the data using the Bayesian model selection criteria.
机译:共享的脆弱模型通常用于模拟生存分析中的异质性。最常见的共享体积模型是一种模型,其中危险功能是随机因子(FRAILTY)和基线危险功能的份量,这是所有个人常见的。关于基线分布的某些假设和脆弱的分布。在本文中,我们认为逆高斯分布作为脆弱分布和三种不同的基线分布,即广义瑞利,加权指数和扩展的威布利分布。通过这三个基线分布,我们提出了三种不同的逆高斯共享的脆弱模型。我们还将这些模型与上述分布的模型进行比较,而无需脆弱。我们使用Markov Chain Monte Carlo(MCMC)技术开发贝叶斯估算程序来估计这些模型中涉及的参数。我们提出了一种模拟研究,可以将参数的真实值与估计值进行比较。搜索文献表明,目前这三个基线分布没有工作,到目前为止,这三个基线分布的共同高斯脆弱。我们还通过使用与肾脏感染数据相关的McGilchrist和Aisbett(1991)的真实生命生存数据集来应用这三种模型,并使用贝叶斯模型选择标准建议更好的模型。

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