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Bayesian models for multivariate current status data with informative censoring.

机译:贝叶斯模型用于具有信息审查的多变量当前状态数据。

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摘要

Multivariate current status data, consist of indicators of whether each of several events occur by the time of a single examination. Our interest focuses on inferences about the joint distribution of the event times. Conventional methods for analysis of multiple event-time data cannot be used because all of the event times are censored and censoring may be informative. Within a given subject, we account for correlated event times through a subject-specific latent variable, conditional upon which the various events are assumed to occur independently. We also assume that each event contributes independently to the hazard of censoring. Nonparametric step functions are used to characterize the baseline distributions of the different event times and of the examination times. Covariate and subject-specific effects are incorporated through generalized linear models. A Markov chain Monte Carlo algorithm is described for estimation of the posterior distributions of the unknowns. The methods are illustrated through application to multiple tumor site data from an animal carcinogenicity study.
机译:多变量当前状态数据由多个事件中的每一个是否在一次检查时发生的指示符组成。我们的兴趣集中在有关事件时间的联合分布的推论上。无法使用用于分析多个事件时间数据的常规方法,因为所有事件时间都经过审查,并且审查可能是有益的。在给定的主题内,我们通过特定于主题的潜在变量来说明相关的事件时间,前提是假设各种事件是独立发生的。我们还假设每个事件都独立地造成了审查的危险。非参数阶跃函数用于表征不同事件时间和检查时间的基线分布。通过广义线性模型合并了协变量和特定于对象的效果。描述了一种马尔可夫链蒙特卡罗算法,用于估计未知数的后验分布。通过对动物致癌性研究中多个肿瘤部位数据的应用说明了这些方法。

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