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A spatial Poisson hurdle model for exploring geographic variation in emergency department visits

机译:用于探索急诊科就诊地理差异的空间泊松跨栏模型

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We develop a spatial Poisson hurdle model to explore geographic variation in emergency department (ED) visits while accounting for zero inflation. The model consists of two components: a Bernoulli component that models the probability of any ED use (i.e. at least one ED visit per year), and a truncated Poisson component that models the number of ED visits given use. Together, these components address both the abundance of Os and the right-skewed nature of the non-zero counts. The model has a hierarchical structure that incorporates patient and area level covariates, as well as spatially correlated random effects for each areal unit. Because regions with high rates of ED use are likely to have high expected counts among users, we model the spatial random effects via a bivariate conditionally auto-regressive prior, which introduces dependence between the components and provides spatial smoothing and sharing of information across neighbouring regions. Using a simulation study, we show that modelling the between-component correlation reduces bias in parameter estimates. We adopt a Bayesian estimation approach, and the model can be fitted by using standard Bayesian software. We apply the model to a study of patient and neighbourhood factors influencing ED use in Durham County, North Carolina.
机译:我们开发了一个空间Poisson障碍模型,以探索急诊室(ED)探视中的地理差异,同时说明零通胀。该模型由两个部分组成:伯努利部分,该部分对任何ED使用的可能性(即每年至少一次ED访问)进行建模,以及截断的泊松部分,该部分对给定使用ED的访问次数进行建模。这些组件一起解决了Os的丰富性和非零计数的右偏性质。该模型具有分层结构,该结构合并了患者和区域级别的协变量,以及每个区域单位的空间相关随机效应。由于具有较高ED使用率的区域在用户中可能具有较高的预期计数,因此我们通过双变量条件自回归先验对空间随机效应进行建模,这会引入组件之间的依赖性,并提供空间平滑和相邻区域之间的信息共享。通过仿真研究,我们表明对组件间相关性进行建模可以减少参数估计中的偏差。我们采用贝叶斯估计方法,并且可以使用标准贝叶斯软件来拟合模型。我们将该模型应用于影响北卡罗来纳州达勒姆县ED使用的患者和邻域因素的研究。

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