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Methodologic implications of social inequalities for analyzing health disparities in large spatiotemporal data sets: an example using breast cancer incidence data (Northern and Southern California, 1988--2002).

机译:社会不平等在分析大型时空数据集中的健康差异方面的方法学意义:使用乳腺癌发病率数据的示例(北加州和南加州,1988--2002年)。

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Efforts to monitor, investigate, and ultimately eliminate health disparities across racial/ethnic and socioeconomic groups can benefit greatly from spatiotemporal models that enable exploration of spatial and temporal variation in health. Hierarchical Bayes methods are well-established tools in the statistical literature for fitting such models, as they permit smoothing of unstable small-area rates. However, issues presented by 'real-life' surveillance data can be a barrier to routine use of these models by epidemiologists. These include (1) shifting of regional boundaries over time, (2) social inequalities in racial/ethnic residential segregation, which imply differential spatial structuring across different racial/ethnic groups, and (3) heavy computational burdens for large spatiotemporal data sets. Using data from a study of changing socioeconomic gradients in female breast cancer incidence in two population-based cancer registries covering the San Francisco Bay Area and Los Angeles County, CA (1988--2002), we illustrate a two-stage approach to modeling health disparities and census tract (CT) variation in incidence over time. In the first stage, we fit race- and year-specific spatial models using CT boundaries normalized to the U.S. Census 2000. In stage 2, temporal patterns in the race- and year-specific estimates of racial/ethnic and socioeconomic effects are explored using a variety of methods. Our approach provides a straightforward means of fitting spatiotemporal models in large data sets, while highlighting differences in spatial patterning across racial/ethnic population and across time.
机译:时空模型可以极大地受益于监测,调查并最终消除种族,族裔和社会经济群体之间健康差异的工作,该模型可以探索健康的时空变化。分级贝叶斯方法是统计文献中建立此类模型的成熟工具,因为它们可以平滑不稳定的小面积速率。但是,“现实生活”监视数据提出的问题可能成为流行病学家常规使用这些模型的障碍。其中包括:(1)区域边界随时间推移而变化;(2)种族/族裔居民隔离中的社会不平等现象,这意味着不同种族/族裔群体之间空间结构的差异;(3)大时空数据集的沉重计算负担。使用来自覆盖旧金山湾区和加利福尼亚州洛杉矶县的两个以人口为基础的癌症注册机构(1988--2002)中女性乳腺癌发病率变化的社会经济梯度研究的数据,我们说明了采用两阶段方法进行健康建模的方法差异和人口普查(CT)发生率随时间的变化。在第一阶段,我们使用归类于2000年美国人口普查的CT边界拟合种族和年度特定的空间模型。在阶段2,使用以下方法探索种族和年度特定的种族/族裔和社会经济影响估计中的时间模式多种方法。我们的方法提供了一种在大型数据集中拟合时空模型的直接方法,同时强调了跨种族/族裔人口以及跨时间的空间格局差异。

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