Department of Comparative Medicine, The University of Tennessee, Knoxville, Tennessee, United States of America.
PLoS One. 2011;6(7):e22693. doi: 10.1371/journal.pone.0022693. Epub 2011 Jul 28.
Socioeconomic, demographic, and geographic factors are known determinants of stroke and myocardial infarction (MI) risk. Clustering of these factors in neighborhoods needs to be taken into consideration during planning, prioritization and implementation of health programs intended to reduce disparities. Given the complex and multidimensional nature of these factors, multivariate methods are needed to identify neighborhood clusters of these determinants so as to better understand the unique neighborhood profiles. This information is critical for evidence-based health planning and service provision. Therefore, this study used a robust multivariate approach to classify neighborhoods and identify their socio-demographic characteristics so as to provide information for evidence-based neighborhood health planning for stroke and MI.
The study was performed in East Tennessee Appalachia, an area with one of the highest stroke and MI risks in USA. Robust principal component analysis was performed on neighborhood (census tract) socioeconomic and demographic characteristics, obtained from the US Census, to reduce the dimensionality and influence of outliers in the data. Fuzzy cluster analysis was used to classify neighborhoods into Peer Neighborhoods (PNs) based on their socioeconomic and demographic characteristics. Nearest neighbor discriminant analysis and decision trees were used to validate PNs and determine the characteristics important for discrimination. Stroke and MI mortality risks were compared across PNs. Four distinct PNs were identified and their unique characteristics and potential health needs described. The highest risk of stroke and MI mortality tended to occur in less affluent PNs located in urban areas, while the suburban most affluent PNs had the lowest risk.
Implementation of this multivariate strategy provides health planners useful information to better understand and effectively plan for the unique neighborhood health needs and is important in guiding resource allocation, service provision, and policy decisions to address neighborhood health disparities and improve population health.
社会经济、人口和地理因素是已知的中风和心肌梗死(MI)风险决定因素。在规划、优先考虑和实施旨在减少差异的健康计划时,需要考虑这些因素在社区中的聚集情况。鉴于这些因素的复杂和多维性质,需要使用多变量方法来确定这些决定因素的邻里集群,以便更好地了解独特的邻里概况。这些信息对于循证健康规划和服务提供至关重要。因此,本研究使用了稳健的多变量方法对邻里进行分类并确定其社会人口特征,以为中风和 MI 的循证邻里健康规划提供信息。
该研究在美国中风和 MI 风险最高的地区之一东田纳西阿巴拉契亚进行。对来自美国人口普查的邻里(普查区)社会经济和人口特征进行稳健主成分分析,以减少数据的维度和异常值的影响。使用模糊聚类分析根据邻里的社会经济和人口特征将邻里分类为同类邻里(PN)。最近邻判别分析和决策树用于验证 PN 并确定用于区分的重要特征。比较了 PN 之间的中风和 MI 死亡率风险。确定了四个不同的 PN,并描述了它们独特的特征和潜在的健康需求。中风和 MI 死亡率风险最高的倾向于发生在位于城市地区的较不富裕的 PN 中,而最富裕的郊区 PN 的风险最低。
实施这种多变量策略为健康规划者提供了有用的信息,以更好地了解和有效规划独特的邻里健康需求,这对于指导资源分配、服务提供和政策决策以解决邻里健康差异和改善人口健康非常重要。