Using natural language processing to identify the status of homelessness and housing instability among serious illness patients from clinical notes in an integrated healthcare system.

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES
JAMIA Open Pub Date : 2023-09-22 eCollection Date: 2023-10-01 DOI:10.1093/jamiaopen/ooad082
Fagen Xie, Susan Wang, Lori Viveros, Allegra Rich, Huong Q Nguyen, Ariadna Padilla, Lindsey Lyons, Claudia L Nau
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引用次数: 0

Abstract

Background: Efficiently identifying the social risks of patients with serious illnesses (SIs) is the critical first step in providing patient-centered and value-driven care for this medically vulnerable population.

Objective: To apply and further hone an existing natural language process (NLP) algorithm that identifies patients who are homeless/at risk of homeless to a SI population.

Methods: Patients diagnosed with SI between 2019 and 2020 were identified using an adapted list of diagnosis codes from the Center for Advance Palliative Care from the Kaiser Permanente Southern California electronic health record. Clinical notes associated with medical encounters within 6 months before and after the diagnosis date were processed by a previously developed NLP algorithm to identify patients who were homeless/at risk of homelessness. To improve the generalizability to the SI population, the algorithm was refined by multiple iterations of chart review and adjudication. The updated algorithm was then applied to the SI population.

Results: Among 206 993 patients with a SI diagnosis, 1737 (0.84%) were identified as homeless/at risk of homelessness. These patients were more likely to be male (51.1%), age among 45-64 years (44.7%), and have one or more emergency visit (65.8%) within a year of their diagnosis date. Validation of the updated algorithm yielded a sensitivity of 100.0% and a positive predictive value of 93.8%.

Conclusions: The improved NLP algorithm effectively identified patients with SI who were homeless/at risk of homelessness and can be used to target interventions for this vulnerable group.

在综合医疗系统中,使用自然语言处理从临床笔记中识别严重疾病患者的无家可归和住房不稳定状况。
背景:有效识别严重疾病患者的社会风险是为这一医学弱势群体提供以患者为中心和价值驱动的护理的关键第一步。目的:应用并进一步完善现有的自然语言过程(NLP)算法,将无家可归/有无家可归风险的患者识别为SI人群。方法:使用来自南加州凯撒永久电子健康记录的高级姑息治疗中心的诊断代码改编列表,确定2019年至2020年间诊断为SI的患者。诊断日期前后6个月内与就诊相关的临床记录由先前开发的NLP算法处理,以识别无家可归/有无家可归风险的患者。为了提高对SI总体的可推广性,该算法通过图表审查和裁决的多次迭代进行了改进。然后将更新后的算法应用于SI群体。结果:在206993名被诊断为SI的患者中,1737人(0.84%)被确定为无家可归/有无家可归风险。这些患者更有可能是男性(51.1%),年龄在45-64岁之间(44.7%),并且在诊断日期后一年内有一次或多次急诊就诊(65.8%)。更新算法的验证产生了100.0%的灵敏度和93.8%的阳性预测值。结论:改进的NLP算法有效地识别了无家可归/有无家可归风险的SI患者,可用于针对这一弱势群体的干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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