John R Blosnich1,2, Ann Elizabeth Montgomery3,4,5, Melissa E Dichter6,7, Adam J Gordon8,9, Dio Kavalieratos10,11, Laura Taylor12, Bryan Ketterer13, Robert M Bossarte13,14,15. 1. Department of Veterans Affairs, VA Pittsburgh Healthcare System, Center for Health Equity Research and Promotion, University Drive C (151C-U), Building 30, Pittsburgh, PA, 15240-1001, USA. john.blosnich@va.gov. 2. Division of General Internal Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA. john.blosnich@va.gov. 3. U.S. Department of Veterans Affairs (VA), National Center on Homelessness Among Veterans, Tampa, FL, USA. 4. Birmingham VA Medical Center, Birmingham, AL, USA. 5. Department of Health Behavior, School of Public Health, University of Alabama at Birmingham, Birmingham, AL, USA. 6. Center for Health Equity Research and Promotion, Corporal Michael J. Crescenz VA Medical Center, Philadelphia, PA, USA. 7. School of Social Work, Temple University, Philadelphia, PA, USA. 8. Informatics, Decision-Enhancement and Analytic Sciences Center, VA Salt Lake City Health Care System, Salt Lake City, UT, USA. 9. Department of Internal Medicine, University of Utah School of Medicine, Salt Lake City, UT, USA. 10. Department of Veterans Affairs, VA Pittsburgh Healthcare System, Center for Health Equity Research and Promotion, University Drive C (151C-U), Building 30, Pittsburgh, PA, 15240-1001, USA. 11. Division of General Internal Medicine, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA. 12. Department of Veterans Affairs, Veterans Health Administration, Care Management and Social Work, Washington, DC, USA. 13. Center of Excellence for Suicide Prevention, Canandaigua, NY, USA. 14. Injury Control Research Center, West Virginia University, Morgantown, WV, USA. 15. Department of Behavioral Medicine and Psychiatry, West Virginia University, Morgantown, WV, USA.
Abstract
BACKGROUND: Health care systems struggle to identify risk factors for suicide. Adverse social determinants of health (SDH) are strong predictors of suicide risk, but most electronic health records (EHR) do not include SDH data. OBJECTIVE: To determine the prevalence of SDH documentation in the EHR and how SDH are associated with suicide ideation and attempt. DESIGN: This cross-sectional analysis included EHR data spanning October 1, 2015-September 30, 2016, from the Veterans Integrated Service Network Region 4. PARTICIPANTS: The study included all patients with at least one inpatient or outpatient visit (n = 293,872). MAIN MEASUREMENTS: Adverse SDH, operationalized using Veterans Health Administration (VHA) coding for services and International Statistical Classification of Diseases and Related Health Problems (ICD)-10 codes, encompassed seven types (violence, housing instability, financial/employment problems, legal problems, familial/social problems, lack of access to care/transportation, and nonspecific psychosocial needs). We defined suicide morbidity by ICD-10 codes and data from the VHA's Suicide Prevention Applications Network. Logistic regression assessed associations of SDH with suicide morbidity, adjusting for socio-demographics and mental health diagnoses (e.g., major depression). Statistical significance was assessed with p < .01. KEY RESULTS: Overall, 16.4% of patients had at least one adverse SDH indicator. Adverse SDH exhibited dose-response-like associations with suicidal ideation and suicide attempt: each additional adverse SDH increased odds of suicidal ideation by 67% (AOR = 1.67, 99%CI = 1.60-1.75; p < .01) and suicide attempt by 49% (AOR = 1.49, 99%CI = 1.33-1.68; p < .01). Independently, each adverse SDH had strong effect sizes, ranging from 1.86 (99%CI = 1.58-2.19; p < .01) for legal issues to 3.10 (99%CI = 2.74-3.50; p < .01) for non-specific psychosocial needs in models assessing suicidal ideation and from 1.58 (99%CI = 1.10-2.27; p < .01) for employment/financial problems to 2.90 (99%CI = 2.30-4.16; p < .01) for violence in models assessing suicide attempt. CONCLUSIONS: SDH were strongly associated with suicidal ideation and suicide attempt even after adjusting for mental health diagnoses. Integration of SDH data in EHR could improve suicide prevention.
BACKGROUND: Health care systems struggle to identify risk factors for suicide. Adverse social determinants of health (SDH) are strong predictors of suicide risk, but most electronic health records (EHR) do not include SDH data. OBJECTIVE: To determine the prevalence of SDH documentation in the EHR and how SDH are associated with suicide ideation and attempt. DESIGN: This cross-sectional analysis included EHR data spanning October 1, 2015-September 30, 2016, from the Veterans Integrated Service Network Region 4. PARTICIPANTS: The study included all patients with at least one inpatient or outpatient visit (n = 293,872). MAIN MEASUREMENTS: Adverse SDH, operationalized using Veterans Health Administration (VHA) coding for services and International Statistical Classification of Diseases and Related Health Problems (ICD)-10 codes, encompassed seven types (violence, housing instability, financial/employment problems, legal problems, familial/social problems, lack of access to care/transportation, and nonspecific psychosocial needs). We defined suicide morbidity by ICD-10 codes and data from the VHA's Suicide Prevention Applications Network. Logistic regression assessed associations of SDH with suicide morbidity, adjusting for socio-demographics and mental health diagnoses (e.g., major depression). Statistical significance was assessed with p < .01. KEY RESULTS: Overall, 16.4% of patients had at least one adverse SDH indicator. Adverse SDH exhibited dose-response-like associations with suicidal ideation and suicide attempt: each additional adverse SDH increased odds of suicidal ideation by 67% (AOR = 1.67, 99%CI = 1.60-1.75; p < .01) and suicide attempt by 49% (AOR = 1.49, 99%CI = 1.33-1.68; p < .01). Independently, each adverse SDH had strong effect sizes, ranging from 1.86 (99%CI = 1.58-2.19; p < .01) for legal issues to 3.10 (99%CI = 2.74-3.50; p < .01) for non-specific psychosocial needs in models assessing suicidal ideation and from 1.58 (99%CI = 1.10-2.27; p < .01) for employment/financial problems to 2.90 (99%CI = 2.30-4.16; p < .01) for violence in models assessing suicide attempt. CONCLUSIONS: SDH were strongly associated with suicidal ideation and suicide attempt even after adjusting for mental health diagnoses. Integration of SDH data in EHR could improve suicide prevention.
Entities:
Keywords:
Veterans; attempted; electronic health records; social determinants of health; suicidal ideation; suicide
Authors: Matthew K Nock; Guilherme Borges; Evelyn J Bromet; Christine B Cha; Ronald C Kessler; Sing Lee Journal: Epidemiol Rev Date: 2008-07-24 Impact factor: 6.222
Authors: John R Blosnich; George R Brown; Jillian C Shipherd Phd; Michael Kauth; Rebecca I Piegari; Robert M Bossarte Journal: Am J Public Health Date: 2013-08-15 Impact factor: 9.308
Authors: Kathleen A McGinnis; Cynthia A Brandt; Melissa Skanderson; Amy C Justice; Shahida Shahrir; Adeel A Butt; Sheldon T Brown; Matthew S Freiberg; Cynthia L Gibert; Matthew Bidwell Goetz; Joon Woo Kim; Margaret A Pisani; David Rimland; Maria C Rodriguez-Barradas; Jason J Sico; Hilary A Tindle; Kristina Crothers Journal: Nicotine Tob Res Date: 2011-09-12 Impact factor: 4.244
Authors: John R Blosnich; Mary C Marsiglio; Melissa E Dichter; Shasha Gao; Adam J Gordon; Jillian C Shipherd; Michael R Kauth; George R Brown; Michael J Fine Journal: Am J Prev Med Date: 2017-02-01 Impact factor: 5.043
Authors: Madeline C Frost; Julie E Richards; John R Blosnich; Eric J Hawkins; Judith I Tsui; E Jennifer Edelman; Emily C Williams Journal: Drug Alcohol Depend Date: 2022-06-03 Impact factor: 4.852
Authors: Olivia V Fletcher; Jessica A Chen; Jenna van Draanen; Madeline C Frost; Anna D Rubinsky; John R Blosnich; Emily C Williams Journal: SSM Popul Health Date: 2022-06-28
Authors: Robert M Bossarte; Chris J Kennedy; Alex Luedtke; Matthew K Nock; Jordan W Smoller; Cara Stokes; Ronald C Kessler Journal: Am J Epidemiol Date: 2021-12-01 Impact factor: 4.897
Authors: Avijit Mitra; Hiba Ahsan; Wenjun Li; Weisong Liu; Robert D Kerns; Jack Tsai; William Becker; David A Smelson; Hong Yu Journal: JMIR Med Inform Date: 2021-11-08
Authors: Maurand Robinson; Ryan Holliday; Lindsey L Monteith; John R Blosnich; Eric B Elbogen; Lillian Gelberg; Dina Hooshyar; Shawn Liu; D Keith McInnes; Ann Elizabeth Montgomery; Jack Tsai; Riley Grassmeyer; Lisa A Brenner Journal: Front Psychol Date: 2022-02-07
Authors: Braja G Patra; Mohit M Sharma; Veer Vekaria; Prakash Adekkanattu; Olga V Patterson; Benjamin Glicksberg; Lauren A Lepow; Euijung Ryu; Joanna M Biernacka; Al'ona Furmanchuk; Thomas J George; William Hogan; Yonghui Wu; Xi Yang; Jiang Bian; Myrna Weissman; Priya Wickramaratne; J John Mann; Mark Olfson; Thomas R Campion; Mark Weiner; Jyotishman Pathak Journal: J Am Med Inform Assoc Date: 2021-11-25 Impact factor: 7.942
Authors: Ian H Stanley; Carol Chu; Sarah M Gildea; Irving H Hwang; Andrew J King; Chris J Kennedy; Alex Luedtke; Brian P Marx; Robert O'Brien; Maria V Petukhova; Nancy A Sampson; Dawne Vogt; Murray B Stein; Robert J Ursano; Ronald C Kessler Journal: Mol Psychiatry Date: 2022-01-20 Impact factor: 13.437
Authors: Emily C Williams; Jessica A Chen; Madeline C Frost; Anna D Rubinsky; Amy T Edmonds; Joseph E Glass; Keren Lehavot; Theresa E Matson; Chelle L Wheat; Scott Coggeshall; John R Blosnich Journal: J Subst Abuse Treat Date: 2021-07-08