UPMC Hillman Cancer Center, Pittsburgh, PA, USA.
Department of Epidemiology, Graduate School of Public Health, University of Pittsburgh, Pittsburgh, PA, USA.
BMC Public Health. 2023 Jan 27;23(1):184. doi: 10.1186/s12889-022-14970-4.
Local governments and other public health entities often need population health measures at the county or subcounty level for activities such as resource allocation and targeting public health interventions, among others. Information collected via national surveys alone cannot fill these needs. We propose a novel, two-step method for rescaling health survey data and creating small area estimates (SAEs) of smoking rates using a Behavioral Risk Factor Surveillance System survey administered in 2015 to participants living in Allegheny County, Pennsylvania, USA.
The first step consisted of a spatial microsimulation to rescale location of survey respondents from zip codes to tracts based on census population distributions by age, sex, race, and education. The rescaling allowed us, in the second step, to utilize available census tract-specific ancillary data on social vulnerability for small area estimation of local health risk using an area-level version of a logistic linear mixed model. To demonstrate this new two-step algorithm, we estimated the ever-smoking rate for the census tracts of Allegheny County.
The ever-smoking rate was above 70% for two census tracts to the southeast of the city of Pittsburgh. Several tracts in the southern and eastern sections of Pittsburgh also had relatively high (> 65%) ever-smoking rates.
These SAEs may be used in local public health efforts to target interventions and educational resources aimed at reducing cigarette smoking. Further, our new two-step methodology may be extended to small area estimation for other locations and health outcomes.
地方政府和其他公共卫生实体经常需要县级或县级以下的人口健康指标,用于资源分配和针对公共卫生干预等活动。仅通过国家调查收集的信息无法满足这些需求。我们提出了一种新颖的两步法,用于调整健康调查数据,并使用 2015 年在美国宾夕法尼亚州阿勒格尼县进行的行为风险因素监测系统调查创建吸烟率的小区域估计 (SAE)。
第一步是空间微模拟,根据年龄、性别、种族和教育等人口分布,将调查受访者的位置从邮政编码重新调整到普查区。在第二步中,我们可以利用可用的普查区特定社会脆弱性辅助数据,使用逻辑线性混合模型的区域级版本,对当地健康风险进行小区域估计。为了演示这种新的两步算法,我们估计了阿勒格尼县的普查区的终身吸烟率。
匹兹堡市东南部的两个普查区的终身吸烟率超过 70%。匹兹堡南部和东部的几个普查区也有相对较高(>65%)的终身吸烟率。
这些 SAE 可用于地方公共卫生工作,以针对旨在减少吸烟的干预措施和教育资源。此外,我们的新两步法可扩展到其他地点和健康结果的小区域估计。