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使用空间微观模拟估计县级健康指标。

Estimating County Level Health Indicators Using Spatial Microsimulation.

作者信息

Seamon Erich, Megheib Mohamed, Williams Christopher J, Murphy Christopher F, Brown Helen F

机构信息

Institute for Modeling, Collaboration, and Innovation (IMCI), University of Idaho, Moscow, Idaho, United States.

Department of Mathematics and Statistical Sciences, University of Idaho, Moscow, Idaho, United States.

出版信息

Popul Space Place. 2023 Jul;29(5). doi: 10.1002/psp.2647. Epub 2023 Jan 29.

Abstract

Given the importance of understanding health outcomes at fine spatial scales, iterative proportional fitting (IPF), a form of small area estimation, was applied to a fixed number of health-related variables (obesity, overweight, diabetes) taken from regionalized 2019 survey responses (n = 5474) from the Idaho Behavioral Risk Factor Surveillance System (BRFSS). Using associated county-level American Community Survey (ACS) census data, a set of constraints, which included age categorization, race, sex, and education level, were used to create county-level weighting matrices for each variable, for each of the seven (7) Idaho public health districts. Using an optimized modeling construction technique, we identified significant constraints and grouping splits for each variable/region, resulting in estimates that were internally and externally validated. Externally validated model results for the most populated counties showed correlations ranging from .79 to .85, with values all below .05. Estimates indicated higher levels of obesity and overweight individuals for midsouth and southwestern Idaho counties, with a cluster of higher diabetes estimates in the center of the state (Gooding, Lincoln, Minidoka, and Jerome counties). Alternative external sources for health outcomes aligned extremely well with our estimates, with wider confidence intervals in more rural counties with sparse populations.

摘要

鉴于在精细空间尺度上理解健康结果的重要性,迭代比例拟合(IPF)这种小区域估计方法,被应用于从爱达荷州行为风险因素监测系统(BRFSS)2019年区域化调查回复(n = 5474)中提取的固定数量的健康相关变量(肥胖、超重、糖尿病)。利用相关的县级美国社区调查(ACS)人口普查数据,一组包括年龄分类、种族、性别和教育水平的约束条件,被用于为爱达荷州七个公共卫生区中的每个变量创建县级加权矩阵。使用优化的建模构建技术,我们为每个变量/区域确定了显著的约束条件和分组划分,从而得到了经过内部和外部验证的估计值。人口最多的县的外部验证模型结果显示,相关性在0.79至0.85之间,p值均低于0.05。估计表明,爱达荷州中南部和西南部各县的肥胖和超重个体水平较高,该州中部(古丁县、林肯县、米尼多卡县和杰罗姆县)有一群糖尿病估计值较高。健康结果的替代外部来源与我们的估计值非常吻合,在人口稀少的农村县置信区间更宽。

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