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Bayesian spatially dependent variable selection for small area health modeling

机译:小区健康建模的贝叶斯空间依赖变量选择

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摘要

>Statistical methods for spatial health data to identify the significant covariates associated with the health outcomes are of critical importance. Most studies have developed variable selection approaches in which the covariates included appear within the spatial domain and their effects are fixed across space. However, the impact of covariates on health outcomes may change across space and ignoring this behavior in spatial epidemiology may cause the wrong interpretation of the relations. Thus, the development of a statistical framework for spatial variable selection is important to allow for the estimation of the space-varying patterns of covariate effects as well as the early detection of disease over space. In this paper, we develop flexible spatial variable selection approaches to find the spatially-varying subsets of covariates with significant effects. A Bayesian hierarchical latent model framework is applied to account for spatially-varying covariate effects. We present a simulation example to examine the performance of the proposed models with the competing models. We apply our models to a county-level low birth weight incidence dataset in Georgia.
机译: >空间的统计方法健康数据确定与健康结果相关的重要协变量具有至关重要的重要性。大多数研究开发了可变选择方法,其中包括在空间域内出现的协变量,它们的效果在空间上固定。然而,协变量对健康结果的影响可能会在空间变化,忽略空间流行病学中的这种行为可能导致对关系的错误解释。因此,用于空间变量选择的统计框架的开发对于允许估计协变量的空间变化模式以及空间上的疾病的早期检测。在本文中,我们开发了灵活的空间变量选择方法,以找到具有显着影响的协变量的空间变化子集。贝叶斯分层潜在模型框架应用于占空间不同的协变量效应。我们展示了一个模拟示例,以检查所提出的模型的性能与竞争模型。我们将模型应用于格鲁吉亚的县级低出生体重率数据集。

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