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Posterior likelihood methods for multivariate survival data

机译:多元生存数据的后验似然方法

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This article deals with the semiparametric analysis of multivariate survival data with random block (group) effects. Survival times within the same group are correlated as a consequence of a frailty random block effect. The standard approaches assume either a parametric or a completely unknown baseline hazard function. This paper considers an intermediate solution, that is, a nonparametric function that is reasonably smooth. This is accomplished by a Bayesian model in which the conditional proportional hazards model is used with a correlated prior process for the baseline hazard. The posterior likelihood based on data, as well as the prior process, is similar to the discretized penalized likelihood for the frailty model. The methodology is exemplified with the recurrent kidney infections data of McGilchrist and Aisbett (1991, Biometrics 47, 461-466), in which the times to infections within the same patients are expected to be correlated. The reanalysis of the data has shown that the estimates of the parameters of interest and the associated standard errors depend on the prior knowledge about the smoothness of the baseline hazard. [References: 37]
机译:本文涉及具有随机块(组)效应的多变量生存数据的半参数分析。由于脆弱的随机阻滞效应,同一组内的生存时间相关。标准方法采用参数化或完全未知的基线危害函数。本文考虑了一个中间解,即合理平滑的非参数函数。这是通过贝叶斯模型完成的,其中将条件比例风险模型与基准风险的相关先验过程一起使用。基于数据的后验似然以及先验过程类似于脆弱模型的离散化惩罚似然。该方法以McGilchrist和Aisbett(1991,Biometrics 47,461-466)的复发性肾脏感染数据为例,其中预期同一患者的感染时间是相关的。数据的重新分析表明,所关注参数的估计值和相关的标准误差取决于对基准危害的平滑度的先验知识。 [参考:37]

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