Using natural language processing to study homelessness longitudinally with electronic health record data subject to irregular observations.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Alec B Chapman, Daniel O Scharfstein, Ann Elizabeth Montgomery, Thomas Byrne, Ying Suo, Atim Effiong, Tania Velasquez, Warren Pettey, Richard E Nelson
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Abstract

The Electronic Health Record (EHR) contains information about social determinants of health (SDoH) such as homelessness. Much of this information is contained in clinical notes and can be extracted using natural language processing (NLP). This data can provide valuable information for researchers and policymakers studying long-term housing outcomes for individuals with a history of homelessness. However, studying homelessness longitudinally in the EHR is challenging due to irregular observation times. In this work, we applied an NLP system to extract housing status for a cohort of patients in the US Department of Veterans Affairs (VA) over a three-year period. We then applied inverse intensity weighting to adjust for the irregularity of observations, which was used generalized estimating equations to estimate the probability of unstable housing each day after entering a VA housing assistance program. Our methods generate unique insights into the long-term outcomes of individuals with a history of homelessness and demonstrate the potential for using EHR data for research and policymaking.

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利用自然语言处理技术,对电子健康记录数据进行不定期观察,纵向研究无家可归问题。
电子健康记录 (EHR) 包含有关健康的社会决定因素 (SDoH) 的信息,如无家可归。这些信息大多包含在临床笔记中,可以使用自然语言处理 (NLP) 提取。这些数据可以为研究人员和政策制定者提供有价值的信息,帮助他们研究有无家可归史的个人的长期住房结果。然而,由于观察时间不规则,在电子病历中纵向研究无家可归问题具有挑战性。在这项工作中,我们应用 NLP 系统提取了美国退伍军人事务部(VA)一组患者三年内的住房状况。然后,我们应用反强度加权法来调整观察结果的不规则性,并使用广义估计方程来估计进入退伍军人事务部住房援助计划后每天住房不稳定的概率。我们的方法对有无家可归史的个人的长期结果产生了独特的见解,并证明了使用电子病历数据进行研究和决策的潜力。
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