通过分级依赖混合物危害进行生存分析

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
F. Camerlenghi, A. Lijoi, I. Pruenster
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引用次数: 11

摘要

分层非参数过程是在概率分布集合上定义先验的流行工具,它会引起多个样本之间的依赖性。在生存分析问题中,人们通常对危险率建模感兴趣,而不是对概率分布本身感兴趣,并且目前可用的方法不适用。在这里,我们通过引入一类新的、可分析处理的多元混合物来填补这一空白,其分布充当样本特异性基线危险率向量的先验。这种依赖性是通过混合随机度量的分层规范来诱导的,该混合随机度量最终对应于随机离散组合结构的组成。我们的理论结果允许为这类模型开发一个完整的贝叶斯分析,它也可以解释右删失生存数据和协变量,我们还显示了后验一致性。特别是,我们强调,我们实现的后验特征是设计用于评估感兴趣的贝叶斯推断的边际和条件算法的关键。通过一些综合和真实的数据实例说明了我们的建议的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survival analysis via hierarchically dependent mixture hazards
Hierarchical nonparametric processes are popular tools for defining priors on collections of probability distributions, which induce dependence across multiple samples. In survival analysis problems one is typically interested in modeling the hazard rates, rather than the probability distributions themselves, and the currently available methodologies are not applicable. Here we fill this gap by introducing a novel, and analytically tractable, class of multivariate mixtures whose distribution acts as a prior for the vector of sample–specific baseline hazard rates. The dependence is induced through a hierarchical specification for the mixing random measures that ultimately corresponds to a composition of random discrete combinatorial structures. Our theoretical results allow to develop a full Bayesian analysis for this class of models, which can also account for right–censored survival data and covariates, and we also show posterior consistency. In particular, we emphasize that the posterior characterization we achieve is the key for devising both marginal and conditional algorithms for evaluating Bayesian inferences of interest. The effectiveness of our proposal is illustrated through some synthetic and real data examples.
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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