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Bias correction in the hierarchical likelihood approach to the analysis of multivariate survival data

机译:分层似然法中偏倚校正对多元生存数据的分析

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摘要

Frailty models are useful for measuring unobserved heterogeneity in risk of failures across clusters, providing cluster-specific risk prediction. In a frailty model, the latent frailties shared by members within a cluster are assumed to act multiplicatively on the hazard function. In order to obtain parameter and frailty variate estimates, we consider the hierarchical likelihood (H-likelihood) approach (. Hierarchical-likelihood approach for frailty models. Biometrika >88, 233–243) in which the latent frailties are treated as “parameters” and estimated jointly with other parameters of interest. We find that the H-likelihood estimators perform well when the censoring rate is low, however, they are substantially biased when the censoring rate is moderate to high. In this paper, we propose a simple and easy-to-implement bias correction method for the H-likelihood estimators under a shared frailty model. We also extend the method to a multivariate frailty model, which incorporates complex dependence structure within clusters. We conduct an extensive simulation study and show that the proposed approach performs very well for censoring rates as high as 80%. We also illustrate the method with a breast cancer data set. Since the H-likelihood is the same as the penalized likelihood function, the proposed bias correction method is also applicable to the penalized likelihood estimators.
机译:脆弱模型可用于衡量跨集群故障风险中未观察到的异质性,从而提供特定于集群的风险预测。在脆弱模型中,假设集群中成员共享的潜在脆弱对危险函数起着乘积作用。为了获得参数和脆弱性变量估计,我们考虑了潜在脆弱性的层次似然(H-似然性)方法(脆弱性模型的分层似然性方法。Biometrika> 88 ,233–243)。被视为“参数”,并与其他感兴趣的参数一起估算。我们发现,当删失率较低时,H似然估计器的性能很好,但是,当删失率从中到高时,它们的估计就大相径庭。在本文中,我们为共享脆弱模型下的H似然估计器提出了一种简单且易于实现的偏差校正方法。我们还将该方法扩展到一个多变量脆弱模型,该模型在集群中合并了复杂的依赖结构。我们进行了广泛的模拟研究,结果表明,所提出的方法在检查率高达80%时表现良好。我们还将用乳腺癌数据集说明该方法。由于H似然度与惩罚似然函数相同,因此所提出的偏差校正方法也适用于惩罚似然估计器。

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