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Integrated likelihoods in parametric survival models for highly clustered censored data

机译:高聚类审查数据的参数生存模型中的综合可能性

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In studies that involve censored time-to-event data, stratification is frequently encountered due to different reasons, such as stratified sampling or model adjustment due to violation of model assumptions. Often, the main interest is not in the clustering variables, and the cluster-related parameters are treated as nuisance. When inference is about a parameter of interest in presence of many nuisance parameters, standard likelihood methods often perform very poorly and may lead to severe bias. This problem is particularly evident in models for clustered data with cluster-specific nuisance parameters, when the number of clusters is relatively high with respect to the within-cluster size. However, it is still unclear how the presence of censoring would affect this issue. We consider clustered failure time data with independent censoring, and propose frequentist inference based on an integrated likelihood. We then apply the proposed approach to a stratified Weibull model. Simulation studies show that appropriately defined integrated likelihoods provide very accurate inferential results in all circumstances, such as for highly clustered data or heavy censoring, even in extreme settings where standard likelihood procedures lead to strongly misleading results. We show that the proposed method performs generally as well as the frailty model, but it is superior when the frailty distribution is seriously misspecified. An application, which concerns treatments for a frequent disease in late-stage HIV-infected people, illustrates the proposed inferential method in Weibull regression models, and compares different inferential conclusions from alternative methods.
机译:在涉及审查事件时间数据的研究中,由于不同的原因而经常遇到分层,例如分层抽样或由于违反模型假设而进行的模型调整。通常,主要关注点不是聚类变量,与聚类相关的参数被视为令人讨厌。当在存在许多令人讨厌的参数的情况下进行有关感兴趣参数的推断时,标准似然方法的执行效果通常很差,并可能导致严重偏差。当群集的数量相对于群集内大小相对较高时,此问题在具有特定于群集的讨厌参数的群集数据的模型中尤其明显。但是,目前尚不清楚审查制度将如何影响这一问题。我们考虑具有独立审查的聚类故障时间数据,并基于综合似然性提出频繁推断。然后,我们将提出的方法应用于分层的Weibull模型。仿真研究表明,在所有情况下(例如对于高度聚类的数据或严格的检查),即使在标准可能性程序导致强烈误导性结果的极端情况下,适当定义的综合可能性也可以提供非常准确的推断结果。我们表明,所提出的方法在总体上与脆弱模型一样好,但是当脆弱分布严重错误指定时,它是更好的方法。涉及晚期HIV感染者常见病治疗方法的应用程序说明了Weibull回归模型中提出的推论方法,并比较了其他方法得出的不同推论结论。

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