Department of Information Systems and Business Analytics, College of Business, Florida International University, Miami, Florida, USA.
The H. John Heinz III College of Information Systems and Public Policy, Carnegie Mellon University, Pittsburgh, Pennsylvania, USA.
J Am Med Inform Assoc. 2020 Nov 1;27(11):1764-1773. doi: 10.1093/jamia/ocaa143.
This integrative review identifies and analyzes the extant literature to examine the integration of social determinants of health (SDoH) domains into electronic health records (EHRs), their impact on risk prediction, and the specific outcomes and SDoH domains that have been tracked.
In accordance with the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines, we conducted a literature search in the PubMed, CINAHL, Cochrane, EMBASE, and PsycINFO databases for English language studies published until March 2020 that examined SDoH domains in the context of EHRs.
Our search strategy identified 71 unique studies that are directly related to the research questions. 75% of the included studies were published since 2017, and 68% were U.S.-based. 79% of the reviewed articles integrated SDoH information from external data sources into EHRs, and the rest of them extracted SDoH information from unstructured clinical notes in the EHRs. We found that all but 1 study using external area-level SDoH data reported minimum contribution to performance improvement in the predictive models. In contrast, studies that incorporated individual-level SDoH data reported improved predictive performance of various outcomes such as service referrals, medication adherence, and risk of 30-day readmission. We also found little consensus on the SDoH measures used in the literature and current screening tools.
The literature provides early and rapidly growing evidence that integrating individual-level SDoH into EHRs can assist in risk assessment and predicting healthcare utilization and health outcomes, which further motivates efforts to collect and standardize patient-level SDoH information.
本综述旨在识别和分析现有文献,以考察健康的社会决定因素(SDoH)领域融入电子健康记录(EHR)的情况、其对风险预测的影响,以及已追踪到的具体结果和 SDoH 领域。
根据 PRISMA(系统评价和荟萃分析的首选报告项目)指南,我们在 PubMed、CINAHL、Cochrane、EMBASE 和 PsycINFO 数据库中进行了文献检索,检索截至 2020 年 3 月发表的研究 EHR 中 SDoH 领域的英文文献。
我们的搜索策略确定了 71 项直接与研究问题相关的独特研究。纳入研究中,75%发表于 2017 年以后,68%为美国研究。79%的综述文章将 SDoH 信息从外部数据源整合到 EHR 中,其余的从 EHR 中的非结构化临床记录中提取 SDoH 信息。我们发现,除了 1 项使用外部区域水平 SDoH 数据的研究外,所有研究报告的预测模型性能改善最小。相比之下,纳入个体水平 SDoH 数据的研究报告了各种结果(如服务转介、药物依从性和 30 天再入院风险)的预测性能得到改善。我们还发现,文献中使用的 SDoH 措施和当前的筛选工具没有达成共识。
文献提供了早期和快速增长的证据,表明将个体水平的 SDoH 纳入 EHR 可以帮助进行风险评估和预测医疗保健利用和健康结果,这进一步激励了收集和标准化患者水平 SDoH 信息的努力。