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A Bayesian unified framework for risk estimation and cluster identification in small area health data analysis

机译:贝叶斯统一框架,用于小区健康数据分析中的风险估算和集群识别

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Many statistical models have been proposed to analyse small area disease data with the aim of describing spatial variation in disease risk. In this paper, we propose a Bayesian hierarchical model that simultaneously allows for risk estimation and cluster identification. Our model formulation assumes that there is an unknown number of risk classes and small areas are assigned to a risk class by means of independent allocation variables. Therefore, areas within each cluster are assumed to share a common risk but they may be geographically separated. The posterior distribution of the parameter representing the number of risk classes is estimated using a novel procedure that combines its prior distribution with an efficient estimate of the marginal likelihood of the data given this parameter. An extension of the model incorporating covariates is also shown. These covariates may incorporate additional information on the problem or they may account for spatial correlation in the data. We illustrate the performance of the proposed model through both a simulation study and a case study of reported cases of varicella in the city of Valencia, Spain.
机译:已经提出了许多统计模型来分析小区疾病数据,目的是描述疾病风险的空间变化。在本文中,我们提出了一种贝叶斯分层模型,同时允许风险估计和集群识别。我们的模型配方假设有一个未知数量的风险等级,并且通过独立分配变量将小区域分配给风险等级。因此,假设每个群集内的区域共享共同风险,但它们可能是地理上分开的。使用一种新的过程估计代表风险等级数量的参数的后部分布,该过程将其先前分布与给定此参数的数据的边际可能性的有效估计有效估计。还显示了包含协变量的模型的延伸。这些协变量可以纳入问题的附加信息,或者他们可能会占数据中的空间相关性。我们通过仿真研究和瓦伦西亚市瓦伦西亚市的报告病例进行了拟议模型的性能。

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