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On robustness of marginal regression coefficient estimates and hazard functions in multivariate survival analysis of family data when the frailty distribution is mis-specified.

机译:关于脆弱性分布错误指定时家庭数据的多元生存分析中的边际回归系数估计和风险函数的鲁棒性。

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摘要

The shared frailty model is an extension of the Cox model to correlated failure times and, essentially, a random effects model for failure time outcomes. In this model, the latent frailty shared by individual members in a cluster acts multiplicatively as a factor on the hazard function and is typically modelled parametrically. One commonly used distribution is gamma, where both shape and scale parameters are set to be the same to allow for unique identification of baseline hazard function. It is popular because it is a conjugate prior, and the posterior distribution possesses the same form as gamma. In addition, the parameter can be interpreted as a time-independent cross-ratio function, a natural extension of odds ratio to failure time outcomes. In this paper, we study the effect of frailty distribution mis-specification on the marginal regression estimates and hazard functions under assumed gamma distribution with an application to family studies. The simulation results show that the biases are generally 10% and lower, even when the true frailty distribution deviates substantially from the assumed gamma distribution. This suggests that the gamma frailty model can be a practical choice in real data analyses if the regression parameters and marginal hazard function are of primary interest and individual cluster members are exchangeable with respect to their dependencies. Copyright (c) 2007 John Wiley & Sons, Ltd.
机译:共享脆弱模型是Cox模型对相关故障时间的扩展,实质上是故障时间结果的随机效应模型。在此模型中,群集中各个成员共享的潜在脆弱性是危害函数的一个乘数,通常是参数化建模。一种常用的分布是伽玛,其中形状和比例参数都设置为相同,以便可以唯一识别基线危害函数。它之所以受欢迎是因为它是共轭先验,后验分布具有与伽玛相同的形式。此外,该参数可以解释为与时间无关的交叉比率函数,是比值对失败时间结果的自然扩展。在本文中,我们研究了在假设的伽玛分布下,脆弱分布错误指定对边际回归估计和危险函数的影响,并将其应用于家庭研究。仿真结果表明,即使真实的脆弱分布大大偏离了假定的伽玛分布,偏差也通常为10%或更低。这表明,如果回归参数和边际风险函数是主要关注因素,并且各个簇成员之间的依赖关系可以互换,则在实际数据分析中,伽玛脆弱模型可能是一个实际的选择。版权所有(c)2007 John Wiley&Sons,Ltd.

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