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Multilevel Regression and Poststratification for Small-Area Estimation of Population Health Outcomes: A Case Study of Chronic Obstructive Pulmonary Disease Prevalence Using the Behavioral Risk Factor Surveillance System

机译:多级回归与人口健康成果小区估计的后期 - 一种使用行为风险因子监测系统慢性阻塞性肺疾病患病率的案例研究

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A variety of small-area statistical models have been developed for health surveys, but none are sufficiently flexible to generate small-area estimates (SAEs) to meet data needs at different geographic levels. We developed a multilevel logistic model with both state- and nested county-level random effects for chronic obstructive pulmonary disease (COPD) using 2011 data from the Behavioral Risk Factor Surveillance System. We applied poststratification with the (decennial) US Census 2010 counts of census-block population to generate census-block-level SAEs of COPD prevalence which could be conveniently aggregated to all other census geographic units, such as census tracts, counties, and congressional districts. The model-based SAEs and direct survey estimates of COPD prevalence were quite consistent at both the county and state levels. The Pearson correlation coefficient was 0.99 at the state level and ranged from 0.88 to 0.95 at the county level. Our extended multilevel regression modeling and poststratification approach could be adapted for other geocoded national health surveys to generate reliable SAEs for population health outcomes at all administrative and legislative geographic levels of interest in a scalable framework.
机译:已经为健康调查开发了各种小面积统计模型,但没有足够灵活性以产生小区估计(SAES)以满足不同地理水平的数据需求。我们开发了一种多级物流模型,具有来自行为风险因子监测系统的2011年数据的慢性阻塞性肺病(COPD)的状态和嵌套县级随机效应。我们用(二年)美国人口普查2010年人口普查群体股票普查群体的普查群普及普及普及普及普及普及普及普及,这可以方便地汇总到所有其他人口普查地理单位,如人口普查,县和国会区。基于模型的SAES和COPD患病率的直接调查估计在县和州级别方面非常一致。 Pearson相关系数在县级的状态下为0.99,在县级0.88至0.95。我们扩展的多级回归建模和后期方法可以适用于其他地理编码国家健康调查,以便在可扩展框架中的所有行政和立法地理水平的所有行政和立法地理水平的人口健康成果产生可靠的萨斯。

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