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Analyzing the Relationship Between Smoking and Coronary Heart Disease at the Small Area Level: A Bayesian Approach to Spatial Modeling

机译:在小区域层面分析吸烟与冠心病之间的关系:一种贝叶斯方法进行空间建模

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We model the relationship between coronary heart disease and smoking prevalence and deprivation at the small area level using the Poisson log-linear model with and without random effects. Extra-Poisson variability (overdispersion) is handled through the addition of spatially structured and unstructured random effects in a Bayesian framework. In addition, four different measures of smoking prevalence are assessed because the smoking data are obtained from a survey that resulted in quite large differences in the size of the sample across the census tracts. Two of the methods use Bayes adjustments of standardized smoking ratios (local and global adjustments), and one uses a nonparametric spatial averaging technique. A preferred model is identified based on the deviance information criterion. Both smoking and deprivation are found to be statistically significant risk factors, but the effect of the smoking variable is reduced once the confounding effects of deprivation are taken into account. Maps of the spatial variability in relative risk, and the importance of the underlying covariates and random effects terms, are produced. We also identify areas with excess relative risk.
机译:我们使用带有和不带有随机效应的泊松对数线性模型对小面积水平的冠心病与吸烟率和剥夺之间的关系进行建模。通过在贝叶斯框架中添加空间结构化和非结构化随机效应来处理超泊松变异性(过度分散)。此外,评估了四种不同的吸烟流行率测量方法,因为吸烟数据是从一项调查中获得的,该调查导致整个人口普查区域的样本量差异很大。其中两种方法使用标准吸烟率的贝叶斯调整(局部和全局调整),一种使用非参数空间平均技术。基于偏差信息标准来识别优选模型。发现吸烟和剥夺都是统计学上显着的危险因素,但是一旦考虑到剥夺的混杂影响,吸烟变量的影响就会降低。绘制了相对风险的空间变异性图,以及潜在协变量和随机效应项的重要性。我们还确定相对风险过大的区域。

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