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Semiparametric Bayesian joint models of multivariate longitudinal and survival data

机译:多元纵向和生存数据的半参数贝叶斯联合模型

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摘要

Joint models for longitudinal and survival data are often used to investigate the association between longitudinal data and survival data in many studies. A common assumption for joint models is that random effects are distributed as a fully parametric distribution such as multivariate normal distribution. The fully parametric distribution assumption of random effects is relaxed by specifying a centered Dirichlet Process Mixture Model (CDPMM) for a general distribution of random effects because of some good properties of CDPMM such as inducing zero mean and continuous probability distribution of random effects. A computationally feasible Bayesian case-deletion diagnostic based on the φ-divergence is proposed to identify the potential influential cases in the joint models. Several simulation studies and a real example are used to illustrate our proposed methodologies.
机译:在许多研究中,常常使用纵向和生存数据的联合模型来研究纵向数据和生存数据之间的关联。联合模型的一个常见假设是,随机效应以完全参数分布的形式分布,例如多元正态分布。由于CDPMM具有某些良好的特性,例如诱发零均值和随机效应的连续概率分布,因此通过为随机效应的一般分布指定一个中心Dirichlet过程混合模型(CDPMM),可以放宽对随机效应的完全参数分布的假设。提出了一种基于φ散度的可计算的贝叶斯案例删除诊断方法,以识别联合模型中潜在的影响案例。几个仿真研究和一个真实的例子用来说明我们提出的方法。

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