Harris Daniel R, Anthony Nicholas, Quesinberry Dana, Delcher Chris
Department of Pharmacy Practice and Science, Institute for Pharmaceutical Outcomes & Policy, College of Pharmacy, University of Kentucky, Lexington, KY, USA.
Kentucky Injury Prevention and Research Center, University of Kentucky, Lexington, KY, USA.
J Clin Transl Sci. 2023 Sep 4;7(1):e196. doi: 10.1017/cts.2023.626. eCollection 2023.
Housing instability is a social determinant of health associated with multiple negative health outcomes including substance use disorders (SUDs). Real-world evidence of housing instability is needed to improve translational research on populations with SUDs.
We identified evidence of housing instability by leveraging structured diagnosis codes and unstructured clinical data from electronic health records of 20,556 patients from 2017 to 2021. We applied natural language processing with named-entity recognition and pattern matching to unstructured clinical notes with free-text documentation. Additionally, we analyzed semi-structured addresses containing explicit or implicit housing-related labels. We assessed agreement on identification methods by having three experts review of 300 records.
Diagnostic codes only identified 58.5% of the population identifiable as having housing instability, whereas 41.5% are identifiable from addresses only (7.1%), clinical notes only (30.4%), or both (4.0%). Reviewers unanimously agreed on 79.7% of cases reviewed; a Fleiss' Kappa score of 0.35 suggested fair agreement yet emphasized the difficulty of analyzing patients having ambiguous housing situations. Among those with poisoning episodes related to stimulants or opioids, diagnosis codes were only able to identify 63.9% of those with housing instability.
All three data sources yield valid evidence of housing instability; each has their own inherent practical use and limitations. Translational researchers requiring comprehensive real-world evidence of housing instability should optimize and implement use of structured and unstructured data. Understanding the role of housing instability and temporary housing facilities is salient in populations with SUDs.
住房不稳定是一种健康的社会决定因素,与包括物质使用障碍(SUDs)在内的多种负面健康结果相关。需要住房不稳定的真实世界证据来改善对患有SUDs人群的转化研究。
我们通过利用2017年至2021年来自20556名患者的电子健康记录中的结构化诊断代码和非结构化临床数据,确定了住房不稳定的证据。我们将自然语言处理与命名实体识别和模式匹配应用于带有自由文本记录的非结构化临床笔记。此外,我们分析了包含明确或隐含住房相关标签的半结构化地址。我们通过让三位专家审查300份记录来评估识别方法的一致性。
诊断代码仅识别出58.5%可确定为住房不稳定的人群,而41.5%可仅从地址(7.1%)、临床笔记(30.4%)或两者(4.0%)中识别出来。审查人员对79.7%的审查病例达成了一致意见;Fleiss' Kappa评分为0.35表明一致性尚可,但强调了分析住房情况不明确患者的困难。在与兴奋剂或阿片类药物相关的中毒事件患者中,诊断代码仅能识别出63.9%住房不稳定的患者。
所有三个数据源都能提供住房不稳定的有效证据;每个数据源都有其固有的实际用途和局限性。需要住房不稳定全面真实世界证据的转化研究人员应优化并实施结构化和非结构化数据的使用。了解住房不稳定和临时住房设施在患有SUDs人群中的作用非常重要。