HealthLandscape, American Academy of Family Physicians, Cincinnati, Ohio, USA.
Health Services Administration, Xavier University, Cincinnati, Ohio, USA
Fam Med Community Health. 2021 Oct;9(Suppl 1). doi: 10.1136/fmch-2021-001259.
The objective of this study was to describe a novel geospatial methodology for identifying poor-performing (priority) and well-performing (bright spot) communities with respect to diabetes management at the ZIP Code Tabulation Area (ZCTA) level. This research was the first phase of a mixed-methods approach known as the focused rapid assessment process (fRAP). Using data from the Lehigh Valley Health Network in eastern Pennsylvania, geographical information systems mapping and spatial analyses were performed to identify diabetes prevalence and A1c control spatial clusters and outliers. We used a spatial empirical Bayes approach to adjust diabetes-related measures, mapped outliers and used the Local Moran's I to identify spatial clusters and outliers. Patients with diabetes were identified from the Lehigh Valley Practice and Community-Based Research Network (LVPBRN), which comprised primary care practices that included a hospital-owned practice, a regional practice association, independent small groups, clinics, solo practitioners and federally qualified health centres. Using this novel approach, we identified five priority ZCTAs and three bright spot ZCTAs in LVPBRN. Three of the priority ZCTAs were located in the urban core of Lehigh Valley and have large Hispanic populations. The other two bright spot ZCTAs have fewer patients and were located in rural areas. As the first phase of fRAP, this method of identifying high-performing and low-performing areas offers potential to mitigate health disparities related to diabetes through targeted exploration of local factors contributing to diabetes management. This novel approach to identification of populations with diabetes performing well or poor at the local community level may allow practitioners to target focused qualitative assessments where the most can be learnt to improve diabetic management of the community.
本研究旨在描述一种新的地理空间方法,用于在邮政编码区 (ZCTA) 层面上确定糖尿病管理表现不佳(优先级)和表现良好(亮点)的社区。这项研究是一种称为聚焦快速评估过程 (fRAP) 的混合方法的第一阶段。使用来自宾夕法尼亚州东部的利哈伊谷健康网络的数据,进行地理信息系统制图和空间分析,以识别糖尿病患病率和 A1c 控制的空间聚类和异常值。我们使用空间经验贝叶斯方法调整与糖尿病相关的措施,绘制异常值,并使用局部 Moran's I 识别空间聚类和异常值。糖尿病患者是从包括医院所有的实践、区域实践协会、独立小团体、诊所、个体从业者和联邦合格的健康中心在内的基层医疗实践的利哈伊谷实践和社区为基础的研究网络 (LVPBRN) 中确定的。使用这种新方法,我们在 LVPBRN 中确定了五个优先级 ZCTA 和三个亮点 ZCTA。三个优先级 ZCTA 位于利哈伊谷的城市核心区,拥有庞大的西班牙裔人口。另外两个亮点 ZCTA 患者较少,位于农村地区。作为 fRAP 的第一阶段,这种识别表现良好和表现不佳地区的方法为通过有针对性地探索导致糖尿病管理的当地因素来缓解与糖尿病相关的健康差距提供了潜力。这种在当地社区层面识别糖尿病患者表现良好或不佳的人群的新方法可以让从业者有针对性地进行集中的定性评估,以了解改善社区糖尿病管理的最有效方法。