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A BAYESIAN SPATIAL AND TEMPORAL MODELING APPROACH TO MAPPING GEOGRAPHIC VARIATION IN MORTALITY RATES FOR SUBNATIONAL AREAS WITH R-INLA

机译:利用R-INLA映射次区域死亡率死亡率地理变化的贝叶斯时空建模方法

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摘要

Hierarchical Bayes models have been used in disease mapping to examine small scale geographic variation. State level geographic variation for less common causes of mortality outcomes have been reported however county level variation is rarely examined. Due to concerns about statistical reliability and confidentiality, county-level mortality rates based on fewer than 20 deaths are suppressed based on Division of Vital Statistics, National Center for Health Statistics (NCHS) statistical reliability criteria, precluding an examination of spatio-temporal variation in less common causes of mortality outcomes such as suicide rates (SRs) at the county level using direct estimates. Existing Bayesian spatio-temporal modeling strategies can be applied via Integrated Nested Laplace Approximation (INLA) in R to a large number of rare causes of mortality outcomes to enable examination of spatio-temporal variations on smaller geographic scales such as counties. This method allows examination of spatiotemporal variation across the entire U.S., even where the data are sparse. We used mortality data from 2005–2015 to explore spatiotemporal variation in SRs, as one particular application of the Bayesian spatio-temporal modeling strategy in R-INLA to predict year and county-specific SRs. Specifically, hierarchical Bayesian spatio-temporal models were implemented with spatially structured and unstructured random effects, correlated time effects, time varying confounders and space-time interaction terms in the software R-INLA, borrowing strength across both counties and years to produce smoothed county level SRs. Model-based estimates of SRs were mapped to explore geographic variation.
机译:疾病诊断中使用了分级贝叶斯模型来检验小规模的地理变化。据报道,州级地理差异是导致死亡结果的较不常见原因,但县级差异很少被检查。由于担心统计的可靠性和机密性,根据国家卫生统计中心生命统计局统计可靠性标准(不包括检验时空变化),抑制了基于少于20例死亡的县级死亡率。使用直接估算得出的县级自杀率(SR)等死亡率结果的不常见原因。可以通过R中的集成嵌套拉普拉斯近似(INLA)将现有的贝叶斯时空建模策略应用于大量导致死亡的罕见原因,从而能够在较小的地理范围(如县)上检查时空变化。即使数据稀疏,该方法也可以检查整个美国的时空变化。我们使用2005-2015年的死亡率数据来探索SR的时空变化,这是贝叶斯时空建模策略在R-INLA中用于预测年份和特定县SR的一种特殊应用。具体而言,在软件R-INLA中实施了具有空间结构化和非结构化随机效应,相关时间效应,时变混杂因素和时空相互作用项的分级贝叶斯时空模型,跨县和跨年的借贷强度产生了平滑的县级水平SR。 SR的基于模型的估计值被映射以探索地理变化。

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