Song Lin, Mercer Laina, Wakefield Jon, Laurent Amy, Solet David
Public Health - Seattle & King County, 501 5th Ave, Ste 1300, Seattle, WA 98104. Email:
Department of Statistics, University of Washington, Seattle, Washington.
Prev Chronic Dis. 2016 May 5;13:E59. doi: 10.5888/pcd13.150536.
King County, Washington, fares well overall in many health indicators. However, county-level data mask disparities among subcounty areas. For disparity-focused assessment, a demand exists for examining health data at subcounty levels such as census tracts and King County health reporting areas (HRAs).
We added a "nearest intersection" question to the Behavioral Risk Factor Surveillance System (BRFSS) and geocoded the data for subcounty geographic areas, including census tracts. To overcome small sample size at the census tract level, we used hierarchical Bayesian models to obtain smoothed estimates in cigarette smoking rates at the census tract and HRA levels. We also used multiple imputation to adjust for missing values in census tracts.
Direct estimation of adult smoking rates at the census tract level ranged from 0% to 56% with a median of 10%. The 90% confidence interval (CI) half-width for census tract with nonzero rates ranged from 1 percentage point to 37 percentage points with a median of 13 percentage points. The smoothed-multiple-imputation rates ranged from 5% to 28% with a median of 12%. The 90% CI half-width ranged from 4 percentage points to 13 percentage points with a median of 8 percentage points.
The nearest intersection question in the BRFSS provided geocoded data at subcounty levels. The Bayesian model provided estimation with improved precision at the census tract and HRA levels. Multiple imputation can be used to account for missing geographic data. Small-area estimation, which has been used for King County public health programs, has increasingly become a useful tool to meet the demand of presenting data at more granular levels.
华盛顿州金县在许多健康指标方面总体表现良好。然而,县级数据掩盖了县内各次区域之间的差异。对于以差异为重点的评估,需要在次县级层面(如人口普查区和金县健康报告区(HRA))检查健康数据。
我们在行为风险因素监测系统(BRFSS)中添加了一个“最近交叉路口”问题,并对包括人口普查区在内的次县级地理区域的数据进行了地理编码。为了克服人口普查区层面样本量小的问题,我们使用分层贝叶斯模型来获得人口普查区和HRA层面吸烟率的平滑估计值。我们还使用多重填补法来调整人口普查区中的缺失值。
人口普查区层面成人吸烟率的直接估计值范围为0%至56%,中位数为10%。非零率的人口普查区的90%置信区间(CI)半宽范围为1个百分点至37个百分点,中位数为13个百分点。平滑多重填补率范围为5%至28%,中位数为12%。90%CI半宽范围为4个百分点至13个百分点,中位数为8个百分点。
BRFSS中的最近交叉路口问题提供了次县级层面的地理编码数据。贝叶斯模型在人口普查区和HRA层面提供了精度更高的估计。多重填补法可用于处理缺失的地理数据。小区域估计已用于金县公共卫生项目,越来越成为满足更细化层面数据呈现需求的有用工具。