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Residual Spatial Correlation Between Geographically Referenced Observations: A Bayesian Hierarchical Modeling Approach.

机译:地理参考观测值之间的剩余空间相关性:贝叶斯层次建模方法。

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BACKGROUND:: Analytic methods commonly used in epidemiology do not account for spatial correlation between observations. In regression analyses, this omission can bias parameter estimates and yield incorrect standard error estimates. We present a Bayesian hierarchical model (BHM) approach that accounts for spatial correlation, and illustrate its strengths and weaknesses by applying this modeling approach to data on Wuchereria bancrofti infection in Haiti. METHODS:: A program to eliminate lymphatic filariasis in Haiti assessed prevalence of W. bancrofti infection in 57 schools across Leogane Commune. We analyzed the spatial pattern in the prevalence data using semi-variograms and correlograms. We then modeled the data using (1) standard logistic regression (GLM); (2) non-Bayesian logistic generalized linear mixed models (GLMMs) with school-specific nonspatial random effects; (3) BHMs with school-specific nonspatial random effects; and (4) BHMs with spatial random effects. RESULTS:: An exponential semi-variogram with an effective range of 2.15 km best fit the data. GLMM and nonspatial BHM point estimates were comparable and also were generally similar with the marginal GLM point estimates. In contrast, compared with the nonspatial mixed model results, spatial BHM point estimates were markedly attenuated. DISCUSSION:: The clear spatial pattern evident in the Haitian W. bancrofti prevalence data and the observation that point estimates and standard errors differed depending on the modeling approach indicate that it is important to account for residual spatial correlation in analyses of W. bancrofti infection data. Bayesian hierarchical models provide a flexible, readily implementable approach to modeling spatially correlated data. However, our results also illustrate that spatial smoothing must be applied with care.
机译:背景:流行病学中常用的分析方法无法说明观测值之间的空间相关性。在回归分析中,这种遗漏会使参数估计值产生偏差,并产生不正确的标准误差估计值。我们提出一种解决空间相关性的贝叶斯分层模型(BHM)方法,并通过将该模型方法应用于海地Wuchereria bancrofti感染的数据来说明其优势和劣势。方法:一项消除海地淋巴丝虫病的计划评估了Leogane公社的57所学校的班氏丝虫感染率。我们使用半变异函数和相关图分析了患病率数据中的空间格局。然后,我们使用(1)标准逻辑回归(GLM)对数据进行建模; (2)具有特定学校非空间随机效应的非贝叶斯逻辑广义线性混合模型(GLMM); (3)具有特定于学校的非空间随机效应的BHM; (4)具有空间随机效应的BHM。结果:有效范围为2.15 km的指数半变异函数最适合该数据。 GLMM和非空间BHM点估计值是可比较的,并且通常与边际GLM点估计值相似。相反,与非空间混合模型结果相比,空间BHM点估计值显着衰减。讨论::海地班克劳弗氏菌流行率数据中明显的清晰空间格局以及根据建模方法不同而得出的点估计值和标准误差也不同,这表明在分析班克劳奇氏菌感染数据时必须考虑残留的空间相关性。贝叶斯层次模型提供了一种灵活,易于实现的方法来对空间相关数据进行建模。但是,我们的结果还表明,必须谨慎应用空间平滑。

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