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首页> 外文期刊>Journal of the royal statistical society >Bayesian hierarchical factor regression models to infer cause of death from verbal autopsy data
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Bayesian hierarchical factor regression models to infer cause of death from verbal autopsy data

机译:贝叶斯分层因子回归模型从口头尸检数据中推断死亡原因

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摘要

In low-resource settings where vital registration of death is not routine it is often of critical interest to determine and study the cause of death (COD) for individuals and the cause-specific mortality fraction (CSMF) for populations. Post-mortem autopsies, considered the gold standard for COD assignment, are often difficult or impossible to implement due to deaths occurring outside the hospital, expense and/or cultural norms. For this reason, verbal autopsies (VAs) are commonly conducted, consisting of a questionnaire administered to next of kin recording demographic information, known medical conditions, symptoms and other factors for the decedent. This article proposes a novel class of hierarchical factor regression models that avoid restrictive assumptions of standard methods, allow both the mean and covariance to vary with COD category, and can include covariate information on the decedent, region or events surrounding death. Taking a Bayesian approach to inference, this work develops an MCMC algorithm and validates the FActor Regression for Verbal Autopsy (FARVA) model in simulation experiments. An application of FARVA to real VA data shows improved goodness-of-fit and better predictive performance in inferring COD and CSMF over competing methods.
机译:在低资源环境中,死亡的重要登记不是常规的,往往是批判性兴趣,确定和研究人口的个体死亡原因(COD)和群体的原因特异性死亡率(CSMF)。验尸后尸检,被认为是COD任务的黄金标准,由于医院外,费用和/或文化规范外发生的死亡往往难以或不可能实施。因此,通常进行口头尸检(VAS),由给予亲属记录人口统计信息,已知的医疗条件,症状和Defent的其他因素的问卷组成。本文提出了一种新颖的分层因子回归模型,避免了标准方法的限制假设,允许与COD类别不同的​​均值和协方差,并且可以包括关于死亡的死者,区域或事件的协变量信息。采用贝叶斯方法推断,这项工作开发了MCMC算法,并验证了模拟实验中的口头尸检(Farva)模型的因子回归。 Farva对真实VA数据的应用显示出在推断COD和CSMF中的拟合良好和更好的预测性能,通过竞争方法。

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