Reagan Sunnie, Prescott Drew, Cao Xueyuan, Girdwood Tyra, Roach Keesha, Stanfill Ansley Grimes
College of Medicine, University of Tennessee Health Science Center, Memphis, Tennessee, USA.
College of Nursing, University of Tennessee Health Science Center, Memphis, Tennessee, USA.
Res Nurs Health. 2025 Jun;48(3):406-412. doi: 10.1002/nur.22461. Epub 2025 Mar 19.
Increasing attention has been paid to investigations on how social determinants of health (SDOH; e.g., income, employment, education, housing, etc.) impact health outcomes. However, these variables are often not collected in routine clinical practice. As a consequence, researchers may attempt to link retrospective medical records to those datasets that can provide additional SDOH information, such as the Area Deprivation Index (ADI). However, time-consuming geographic calculations can deter these analyses. To reduce this burden, the ezADI R package performs batched geocoder mapping on inputted addresses, constructs Federal Information Processing Series (FIPS) codes, and then merges these data with ADI scores. The applicability and feasibility of this ezADI tool was tested on a sample of patients with sickle cell disease (SCD). Individuals with SCD are at risk for developing serious comorbidities; disadvantageous SDOH may increase this risk, in turn leading to higher rates of hospital utilization and longer lengths of stay on admission. In this sample of 1,105 individuals with SCD in Tennessee (53.8% female, 97.5% African American), higher ADI scores (i.e., more neighborhood disadvantage) were significantly associated with increased hospital utilization (rho = 0.093, p = 0.002) and longer lengths of stay (rho = 0.069, p = 0.021). These areas could be targeted with neighborhood-level interventions and other resources to improve SDOH. This study provides proof of concept that the ezADI tool simplifies geocoding calculations to allow researchers to link datasets with the ADI and assess associations between SDOH factors and health outcomes.
人们越来越关注关于健康的社会决定因素(SDOH;例如收入、就业、教育、住房等)如何影响健康结果的调查。然而,这些变量在常规临床实践中往往未被收集。因此,研究人员可能会尝试将回顾性医疗记录与那些能够提供额外SDOH信息的数据集相链接,比如地区贫困指数(ADI)。然而,耗时的地理计算可能会阻碍这些分析。为了减轻这一负担,ezADI R软件包对输入的地址进行批量地理编码映射,构建联邦信息处理系列(FIPS)代码,然后将这些数据与ADI分数合并。该ezADI工具的适用性和可行性在镰状细胞病(SCD)患者样本上进行了测试。患有SCD的个体有发生严重合并症的风险;不利的SDOH可能会增加这种风险,进而导致更高的医院利用率和更长的住院时间。在田纳西州的这个包含1105名SCD患者的样本中(53.8%为女性,97.5%为非裔美国人),较高的ADI分数(即邻里劣势更大)与医院利用率增加(rho = 0.093,p = 0.002)和更长的住院时间(rho = 0.069,p = 0.021)显著相关。这些地区可以通过邻里层面的干预措施和其他资源来改善SDOH。本研究提供了概念验证,即ezADI工具简化了地理编码计算,使研究人员能够将数据集与ADI相链接,并评估SDOH因素与健康结果之间的关联。