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Exploring the Specifications of Spatial Adjacencies and Weights in Bayesian Spatial Modeling with Intrinsic Conditional Autoregressive Priors in a Small-area Study of Fall Injuries

机译:在具有跌倒伤害的小区域研究中使用内在条件自回归先验探索贝叶斯空间模型中的空间邻接和权重的规范

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摘要

Intrinsic conditional autoregressive modeling in a Bayeisan hierarchical framework has been increasingly applied in small-area ecological studies. This study explores the specifications of spatial structure in this Bayesian framework in two aspects: adjacency, i.e., the set of neighbor(s) for each area; and (spatial) weight for each pair of neighbors. Our analysis was based on a small-area study of falling injuries among people age 65 and older in Ontario, Canada, that was aimed to estimate risks and identify risk factors of such falls. In the case study, we observed incorrect adjacencies information caused by deficiencies in the digital map itself. Further, when equal weights was replaced by weights based on a variable of expected count, the range of estimated risks increased, the number of areas with probability of estimated risk greater than one at different probability thresholds increased, and model fit improved. More importantly, significance of a risk factor diminished. Further research to thoroughly investigate different methods of variable weights; quantify the influence of specifications of spatial weights; and develop strategies for better defining spatial structure of a map in small-area analysis in Bayesian hierarchical spatial modeling is recommended.
机译:Bayeisan分层框架中的内在条件自回归建模已越来越多地应用于小区域生态研究中。这项研究从两个方面探讨了该贝叶斯框架中空间结构的规范:邻接关系,即每个区域的邻居集;和每对邻居的(空间)权重。我们的分析基于加拿大安大略省65岁及65岁以上人群坠落伤害的小区域研究,该研究旨在评估此类坠落的风险并确定此类坠落的风险因素。在案例研究中,我们观察到由数字地图本身的缺陷引起的不正确的邻接信息。此外,当使用基于预期计数变量的权重替换相等的权重时,估计风险的范围会增加,在不同概率阈值处估计风险的可能性大于1的区域数会增加,并且模型拟合也会得到改善。更重要的是,危险因素的重要性降低了。进一步研究以彻底研究不同的可变权重方法;量化空间权重规范的影响;并建议在贝叶斯分级空间建模中开发小区域分析中更好地定义地图空间结构的策略。

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