Evaluation of a Model to Target High-risk Psychiatric Inpatients for an Intensive Postdischarge Suicide Prevention Intervention

Author:

Kessler Ronald C.1,Bauer Mark S.23,Bishop Todd M.45,Bossarte Robert M.46,Castro Victor M.7,Demler Olga V.89,Gildea Sarah M.1,Goulet Joseph L.1011,King Andrew J.1,Kennedy Chris J.212,Landes Sara J.1314,Liu Howard14,Luedtke Alex1516,Mair Patrick17,Marx Brian P.1819,Nock Matthew K.17,Petukhova Maria V.1,Pigeon Wilfred R.45,Sampson Nancy A.1,Smoller Jordan W.212202122,Miller Aletha23,Haas Gretchen2425,Benware Jeffrey26,Bradley John23,Owen Richard R.2728,House Samuel2728,Urosevic Snezana2930,Weinstock Lauren M.31

Affiliation:

1. Department of Health Care Policy, Harvard Medical School, Boston, Massachusetts

2. Department of Psychiatry, Harvard Medical School, Boston, Massachusetts

3. VA Boston Healthcare System, Boston, Massachusetts

4. Center of Excellence for Suicide Prevention, Canandaigua VA Medical Center, Canandaigua, New York

5. Department of Psychiatry, University of Rochester Medical Center, Rochester, New York

6. Department of Psychiatry and Behavioral Neurosciences, University of South Florida, Tampa

7. Research Information Science and Computing, Mass General Brigham, Somerville, Massachusetts

8. Department of Medicine, Brigham and Women’s Hospital, Harvard Medical School, Boston, Massachusetts

9. Department of Computer Science, ETH Zurich, Zurich, Switzerland

10. Pain, Research, Informatics, Multi-morbidities and Education Center, VA Connecticut Healthcare System, West Haven

11. Department of Emergency Medicine, Yale School of Medicine, New Haven, Connecticut

12. Department of Psychiatry, Massachusetts General Hospital, Boston

13. Behavioral Health Quality Enhancement Research Initiative (QUERI), Central Arkansas Veterans Healthcare System, North Little Rock

14. Department of Psychiatry, University of Arkansas for Medical Sciences, Little Rock

15. Department of Statistics, University of Washington, Seattle

16. Vaccine and Infectious Disease Division, Fred Hutchinson Cancer Research Center, Seattle, Washington

17. Department of Psychology, Harvard University, Cambridge, Massachusetts

18. National Center for PTSD, VA Boston Healthcare System, Boston, Massachusetts

19. Department of Psychiatry, Boston University School of Medicine, Boston, Massachusetts

20. Center for Precision Psychiatry, Massachusetts General Hospital, Boston

21. Stanley Center for Psychiatric Research, Broad Institute of MIT and Harvard, Cambridge, Massachusetts

22. Department of Epidemiology, Harvard T. H. Chan School of Public Health, Boston, Massachusetts

23. VA North Texas Healthcare System, Dallas

24. VA Pittsburgh Healthcare System, Pittsburgh, Pennsylvania

25. Department of Psychiatry, University of Pittsburgh School of Medicine, Pittsburgh, Pennsylvania

26. VA St Louis Healthcare System, St Louis, Missouri

27. Central Arkansas Veterans Healthcare System, Little Rock

28. Psychiatric Research Institute, University of Arkansas for Medical Sciences, Little Rock

29. Minneapolis VA Healthcare System, Minneapolis, Minnesota

30. Department of Psychiatry and Behavioral Sciences, University of Minnesota, Minneapolis

31. Department of Psychiatry and Human Behavior, Alpert Medical School of Brown University, Providence, Rhode Island

Abstract

ImportanceThe months after psychiatric hospital discharge are a time of high risk for suicide. Intensive postdischarge case management, although potentially effective in suicide prevention, is likely to be cost-effective only if targeted at high-risk patients. A previously developed machine learning (ML) model showed that postdischarge suicides can be predicted from electronic health records and geospatial data, but it is unknown if prediction could be improved by adding additional information.ObjectiveTo determine whether model prediction could be improved by adding information extracted from clinical notes and public records.Design, Setting, and ParticipantsModels were trained to predict suicides in the 12 months after Veterans Health Administration (VHA) short-term (less than 365 days) psychiatric hospitalizations between the beginning of 2010 and September 1, 2012 (299 050 hospitalizations, with 916 hospitalizations followed within 12 months by suicides) and tested in the hospitalizations from September 2, 2012, to December 31, 2013 (149 738 hospitalizations, with 393 hospitalizations followed within 12 months by suicides). Validation focused on net benefit across a range of plausible decision thresholds. Predictor importance was assessed with Shapley additive explanations (SHAP) values. Data were analyzed from January to August 2022.Main Outcomes and MeasuresSuicides were defined by the National Death Index. Base model predictors included VHA electronic health records and patient residential data. The expanded predictors came from natural language processing (NLP) of clinical notes and a social determinants of health (SDOH) public records database.ResultsThe model included 448 788 unique hospitalizations. Net benefit over risk horizons between 3 and 12 months was generally highest for the model that included both NLP and SDOH predictors (area under the receiver operating characteristic curve range, 0.747-0.780; area under the precision recall curve relative to the suicide rate range, 3.87-5.75). NLP and SDOH predictors also had the highest predictor class-level SHAP values (proportional SHAP = 64.0% and 49.3%, respectively), although the single highest positive variable-level SHAP value was for a count of medications classified by the US Food and Drug Administration as increasing suicide risk prescribed the year before hospitalization (proportional SHAP = 15.0%).Conclusions and RelevanceIn this study, clinical notes and public records were found to improve ML model prediction of suicide after psychiatric hospitalization. The model had positive net benefit over 3-month to 12-month risk horizons for plausible decision thresholds. Although caution is needed in inferring causality based on predictor importance, several key predictors have potential intervention implications that should be investigated in future studies.

Publisher

American Medical Association (AMA)

Subject

Psychiatry and Mental health

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