Associations Between Natural Language Processing–Enriched Social Determinants of Health and Suicide Death Among US Veterans

Author:

Mitra Avijit1,Pradhan Richeek2,Melamed Rachel D.3,Chen Kun45,Hoaglin David C.6,Tucker Katherine L.7,Reisman Joel I.8,Yang Zhichao1,Liu Weisong910,Tsai Jack1112,Yu Hong18910

Affiliation:

1. Manning College of Information and Computer Sciences, University of Massachusetts Amherst

2. Department of Epidemiology, Biostatistics and Occupational Health, McGill University, Montreal, Quebec, Canada

3. Department of Biological Sciences, University of Massachusetts Lowell

4. Department of Statistics, University of Connecticut, Storrs

5. Center for Population Health, Uconn Health, Farmington, Connecticut

6. Department of Population and Quantitative Health Sciences, University of Massachusetts Chan Medical School, Worcester

7. Department of Biomedical & Nutritional Sciences, University of Massachusetts Lowell

8. Center for Healthcare Organization & Implementation Research, Veterans Affairs Bedford Healthcare System, Bedford, Massachusetts

9. Miner School of Computer and Information Sciences, University of Massachusetts Lowell

10. Center for Biomedical and Health Research in Data Sciences, University of Massachusetts Lowell

11. National Center on Homelessness Among Veterans, US Department of Veterans Affairs, Tampa, Florida

12. School of Public Health, University of Texas Health Science Center at Houston

Abstract

ImportanceSocial determinants of health (SDOHs) are known to be associated with increased risk of suicidal behaviors, but few studies use SDOHs from unstructured electronic health record notes.ObjectiveTo investigate associations between veterans’ death by suicide and recent SDOHs, identified using structured and unstructured data.Design, Setting, and ParticipantsThis nested case-control study included veterans who received care under the US Veterans Health Administration from October 1, 2010, to September 30, 2015. A natural language processing (NLP) system was developed to extract SDOHs from unstructured clinical notes. Structured data yielded 6 SDOHs (ie, social or familial problems, employment or financial problems, housing instability, legal problems, violence, and nonspecific psychosocial needs), NLP on unstructured data yielded 8 SDOHs (social isolation, job or financial insecurity, housing instability, legal problems, barriers to care, violence, transition of care, and food insecurity), and combining them yielded 9 SDOHs. Data were analyzed in May 2022.ExposuresOccurrence of SDOHs over a maximum span of 2 years compared with no occurrence of SDOH.Main Outcomes and MeasuresCases of suicide death were matched with 4 controls on birth year, cohort entry date, sex, and duration of follow-up. Suicide was ascertained by National Death Index, and patients were followed up for up to 2 years after cohort entry with a study end date of September 30, 2015. Adjusted odds ratios (aORs) and 95% CIs were estimated using conditional logistic regression.ResultsOf 6 122 785 veterans, 8821 committed suicide during 23 725 382 person-years of follow-up (incidence rate 37.18 per 100 000 person-years). These 8821 veterans were matched with 35 284 control participants. The cohort was mostly male (42 540 [96.45%]) and White (34 930 [79.20%]), with 6227 (14.12%) Black veterans. The mean (SD) age was 58.64 (17.41) years. Across the 5 common SDOHs, NLP-extracted SDOH, on average, retained 49.92% of structured SDOHs and covered 80.03% of all SDOH occurrences. SDOHs, obtained by structured data and/or NLP, were significantly associated with increased risk of suicide. The 3 SDOHs with the largest effect sizes were legal problems (aOR, 2.66; 95% CI, 2.46-2.89), violence (aOR, 2.12; 95% CI, 1.98-2.27), and nonspecific psychosocial needs (aOR, 2.07; 95% CI, 1.92-2.23), when obtained by combining structured data and NLP.Conclusions and RelevanceIn this study, NLP-extracted SDOHs, with and without structured SDOHs, were associated with increased risk of suicide among veterans, suggesting the potential utility of NLP in public health studies.

Publisher

American Medical Association (AMA)

Subject

General Medicine

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