2012
DOI: 10.1111/j.1467-985x.2012.01039.x
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A Spatial Poisson Hurdle Model for Exploring Geographic Variation in Emergency Department Visits

Abstract: Summary 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 zeros and the right-skewed nature of the nonzero counts. The model has a hierarc… Show more

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Cited by 64 publications
(84 citation statements)
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“…Covariates such as measures for need, demographic characteristics, and resources are incorporated into both the logistic regression and the log linear regression. The spatial dependence is introduced by a spatially dependent random effect in the log linear model of the Poisson intensity (e.g., Agarwal, Gelfand, and Citron-Pousty, 2002;Neelon, Ghosh, and Loebs, 2013). Inferences about the model are done naturally in the Bayesian framework, and comparison with competing models is done via conditional predictive ordinate (CPO) (Gelfand, Dey, and Chang, 1992).…”
Section: Accepted Manuscriptmentioning
confidence: 99%
“…Covariates such as measures for need, demographic characteristics, and resources are incorporated into both the logistic regression and the log linear regression. The spatial dependence is introduced by a spatially dependent random effect in the log linear model of the Poisson intensity (e.g., Agarwal, Gelfand, and Citron-Pousty, 2002;Neelon, Ghosh, and Loebs, 2013). Inferences about the model are done naturally in the Bayesian framework, and comparison with competing models is done via conditional predictive ordinate (CPO) (Gelfand, Dey, and Chang, 1992).…”
Section: Accepted Manuscriptmentioning
confidence: 99%
“…This temporal structure can be justified by the apparent randomness as shown in econometric model proposed by [13], specifically a hurdle model. It consists of two stages and specified in a way to gather together the two processes theoretically involved in the presence of wildfires, that is, the occurrence of being a big wildfire (greater than a given extension of hectares) and the frequency of big wildfires per spatial unit ( [28]). Specifically, the Poisson hurdle model consists of a point mass at zero followed by a truncated Poisson distribution for the non-zero observations.…”
Section: Methodsmentioning
confidence: 99%
“…For groups of adjacent areas with dissimilar risk, p i may take a value close to one, emphasizing unstructured random effects, whereas for groups of adjacent areas with similar risk, p i may take a small value and emphasize spatial smoothing. Note that a variety of mixture schemes are possible in this modeling framework, including discrete mixtures that involve model switching based on, for example, observed outcome counts (i.e., zero-inflated models (Neelon et al 2013)), or continuous mixtures of Gaussian and non-Gaussian spatially structured random effects (Lawson and Clark 2002).…”
Section: Spatial Mixture Modelmentioning
confidence: 99%