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Bayesian and likelihood inference for cure rates based on defective inverse Gaussian regression models

机译:基于缺陷逆高斯回归模型的贝叶斯和似然推断治愈率

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Failure time models are considered when there is a subpopulation of individuals that is immune, or not susceptible, to an event of interest. Such models are of considerable interest in biostatistics. The most common approach is to postulate a proportion p of immunes or long-term survivors and to use a mixture model [5]. This paper introduces the defective inverse Gaussian model as a cure model and examines the use of the Gibbs sampler together with a data augmentation algorithm to study Bayesian inferences both for the cured fraction and the regression parameters. The results of the Bayesian and likelihood approaches are illustrated on two real data sets.
机译:当存在对感兴趣事件免疫或不敏感的个体子群时,将考虑故障时间模型。这样的模型在生物统计学中引起了极大的兴趣。最常见的方法是假定一定比例的免疫或长期幸存者并使用混合模型[5]。本文介绍了有缺陷的逆高斯模型作为固化模型,并研究了Gibbs采样器和数据增强算法的使用,以研究固化分数和回归参数的贝叶斯推断。在两个真实数据集上说明了贝叶斯方法和似然方法的结果。

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