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Method for mapping population-based case-control studies: an application using generalized additive models

机译:绘制基于人群的病例对照研究的方法:使用广义加性模型的应用

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Background Mapping spatial distributions of disease occurrence and risk can serve as a useful tool for identifying exposures of public health concern. Disease registry data are often mapped by town or county of diagnosis and contain limited data on covariates. These maps often possess poor spatial resolution, the potential for spatial confounding, and the inability to consider latency. Population-based case-control studies can provide detailed information on residential history and covariates. Results Generalized additive models (GAMs) provide a useful framework for mapping point-based epidemiologic data. Smoothing on location while controlling for covariates produces adjusted maps. We generate maps of odds ratios using the entire study area as a reference. We smooth using a locally weighted regression smoother (loess), a method that combines the advantages of nearest neighbor and kernel methods. We choose an optimal degree of smoothing by minimizing Akaike's Information Criterion. We use a deviance-based test to assess the overall importance of location in the model and pointwise permutation tests to locate regions of significantly increased or decreased risk. The method is illustrated with synthetic data and data from a population-based case-control study, using S-Plus and ArcView software. Conclusion Our goal is to develop practical methods for mapping population-based case-control and cohort studies. The method described here performs well for our synthetic data, reproducing important features of the data and adequately controlling the covariate. When applied to the population-based case-control data set, the method suggests spatial confounding and identifies statistically significant areas of increased and decreased odds ratios.
机译:背景绘制疾病发生和风险的空间分布图可以作为识别公共卫生问题的有用工具。疾病登记数据通常按诊断的城镇或县进行映射,并且包含有关协变量的有限数据。这些地图通常具有较差的空间分辨率,潜在的空间混淆以及无法考虑等待时间。基于人群的病例对照研究可以提供有关居住历史和协变量的详细信息。结果广义加性模型(GAM)为映射基于点的流行病学数据提供了有用的框架。在控制协变量的同时平滑位置会生成调整后的地图。我们使用整个研究区域作为参考来生成优势比的地图。我们使用局部加权回归平滑器(黄土)进行平滑处理,该方法结合了最近邻法和核方法的优点。我们通过最小化赤池的信息准则来选择最佳的平滑度。我们使用基于偏差的检验来评估模型中位置的总体重要性,并使用逐点置换检验来确定风险显着增加或降低的区域。使用S-Plus和ArcView软件,通过合成数据和基于人群的病例对照研究的数据说明了该方法。结论我们的目标是开发实用的方法来绘制基于人群的病例对照研究和队列研究。此处描述的方法对于我们的综合数据表现良好,可重现数据的重要特征并适当控制协变量。当应用于基于人群的病例对照数据集时,该方法建议进行空间混淆,并确定统计上显着增加或降低比值比的区域。

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