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威布尔生存模型的贝叶斯方法——在癌症临床试验中的应用

A Bayesian approach to Weibull survival models--application to a cancer clinical trial.

作者信息

Abrams K, Ashby D, Errington D

机构信息

Department of Epidemiology and Public Health, University of Leicester, U.K.

出版信息

Lifetime Data Anal. 1996;2(2):159-74. doi: 10.1007/BF00128573.

Abstract

In this paper we outline a class of fully parametric proportional hazards models, in which the baseline hazard is assumed to be a power transform of the time scale, corresponding to assuming that survival times follow a Weibull distribution. Such a class of models allows for the possibility of time varying hazard rates, but assumes a constant hazard ratio. We outline how Bayesian inference proceeds for such a class of models using asymptotic approximations which require only the ability to maximize the joint log posterior density. We apply these models to a clinical trial to assess the efficacy of neutron therapy compared to conventional treatment for patients with tumours of the pelvic region. In this trial there was prior information about the log hazard ratio both in terms of elicited clinical beliefs and the results of previous studies. Finally, we consider a number of extensions to this class of models, in particular the use of alternative baseline functions, and the extension to multi-state data.

摘要

在本文中,我们概述了一类完全参数化的比例风险模型,其中基线风险被假定为时间尺度的幂变换,这相当于假定生存时间服从威布尔分布。这类模型允许风险率随时间变化,但假定风险比恒定。我们概述了如何使用渐近近似对这类模型进行贝叶斯推断,这种渐近近似只需要具备最大化联合对数后验密度的能力。我们将这些模型应用于一项临床试验,以评估中子疗法与传统疗法相比对盆腔区域肿瘤患者的疗效。在该试验中,无论是从得出的临床信念还是从先前研究的结果来看,都有关于对数风险比的先验信息。最后,我们考虑了这类模型的一些扩展,特别是使用替代基线函数以及扩展到多状态数据。

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