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Using Administrative Data to Predict Suicide After Psychiatric Hospitalization in the Veterans Health Administration System.

Authors :
Kessler RC
Bauer MS
Bishop TM
Demler OV
Dobscha SK
Gildea SM
Goulet JL
Karras E
Kreyenbuhl J
Landes SJ
Liu H
Luedtke AR
Mair P
McAuliffe WHB
Nock M
Petukhova M
Pigeon WR
Sampson NA
Smoller JW
Weinstock LM
Bossarte RM
Source :
Frontiers in psychiatry [Front Psychiatry] 2020 May 06; Vol. 11, pp. 390. Date of Electronic Publication: 2020 May 06 (Print Publication: 2020).
Publication Year :
2020

Abstract

There is a very high suicide rate in the year after psychiatric hospital discharge. Intensive postdischarge case management programs can address this problem but are not cost-effective for all patients. This issue can be addressed by developing a risk model to predict which inpatients might need such a program. We developed such a model for the 391,018 short-term psychiatric hospital admissions of US veterans in Veterans Health Administration (VHA) hospitals 2010-2013. Records were linked with the National Death Index to determine suicide within 12 months of hospital discharge (n=771). The Super Learner ensemble machine learning method was used to predict these suicides for time horizon between 1 week and 12 months after discharge in a 70% training sample. Accuracy was validated in the remaining 30% holdout sample. Predictors included VHA administrative variables and small area geocode data linked to patient home addresses. The models had AUC=.79-.82 for time horizons between 1 week and 6 months and AUC=.74 for 12 months. An analysis of operating characteristics showed that 22.4%-32.2% of patients who died by suicide would have been reached if intensive case management was provided to the 5% of patients with highest predicted suicide risk. Positive predictive value (PPV) at this higher threshold ranged from 1.2% over 12 months to 3.8% per case manager year over 1 week. Focusing on the low end of the risk spectrum, the 40% of patients classified as having lowest risk account for 0%-9.7% of suicides across time horizons. Variable importance analysis shows that 51.1% of model performance is due to psychopathological risk factors accounted, 26.2% to social determinants of health, 14.8% to prior history of suicidal behaviors, and 6.6% to physical disorders. The paper closes with a discussion of next steps in refining the model and prospects for developing a parallel precision treatment model.<br /> (Copyright © 2020 Kessler, Bauer, Bishop, Demler, Dobscha, Gildea, Goulet, Karras, Kreyenbuhl, Landes, Liu, Luedtke, Mair, McAuliffe, Nock, Petukhova, Pigeon, Sampson, Smoller, Weinstock and Bossarte.)

Details

Language :
English
ISSN :
1664-0640
Volume :
11
Database :
MEDLINE
Journal :
Frontiers in psychiatry
Publication Type :
Academic Journal
Accession number :
32435212
Full Text :
https://doi.org/10.3389/fpsyt.2020.00390