Using Machine Learning to Predict Suicide Attempts in Military Personnel

•Previous models used to predict suicide have very low sensitivity.•Current study used machine learning approach to predict suicide attempts using a clinical trial dataset.•Worst-point suicidal ideation, history of multiple suicide attempts, treatment group, suicidogenic cognitions, and male sex wer...

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Veröffentlicht in:Psychiatry research 2020-12, Vol.294, p.113515-113515, Article 113515
Hauptverfasser: Rozek, David C., Andres, William C., Smith, Noelle B., Leifker, Feea R., Arne, Kim, Jennings, Greg, Dartnell, Nate, Bryan, Craig J., Rudd, M. David
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container_end_page 113515
container_issue
container_start_page 113515
container_title Psychiatry research
container_volume 294
creator Rozek, David C.
Andres, William C.
Smith, Noelle B.
Leifker, Feea R.
Arne, Kim
Jennings, Greg
Dartnell, Nate
Bryan, Craig J.
Rudd, M. David
description •Previous models used to predict suicide have very low sensitivity.•Current study used machine learning approach to predict suicide attempts using a clinical trial dataset.•Worst-point suicidal ideation, history of multiple suicide attempts, treatment group, suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period.•This sensitivity is higher than most suicide prediction models. Identifying predictors of suicide attempts is critical in intervention and prevention efforts, yet finding predictors has proven difficult due to the low base rate and underpowered statistical approaches. The objective of the current study was to use machine learning to examine predictors of suicidal behaviors among high-risk suicidal Soldiers who received outpatient mental health services in a randomized controlled trial of Brief Cognitive Behavioral Therapy for Suicide Prevention (BCBT) compared to treatment as usual (TAU). Self-report measures of clinical and demographic variables, administered prior to the start of outpatient treatment to 152 participants with recent suicidal thoughts and/or behaviors were analyzed using machine learning software to identify the best combination of variables for predicting suicide attempts during or after treatment. Worst-point suicidal ideation, history of multiple suicide attempts, treatment group (i.e., BCBT or TAU), suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period. This combination has higher sensitivity than many models that have previously been used to predict suicidal behavior. Overall, this study provides a combination of variables that can be assessed clinical to help identify high-risk suicidal individuals.
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The objective of the current study was to use machine learning to examine predictors of suicidal behaviors among high-risk suicidal Soldiers who received outpatient mental health services in a randomized controlled trial of Brief Cognitive Behavioral Therapy for Suicide Prevention (BCBT) compared to treatment as usual (TAU). Self-report measures of clinical and demographic variables, administered prior to the start of outpatient treatment to 152 participants with recent suicidal thoughts and/or behaviors were analyzed using machine learning software to identify the best combination of variables for predicting suicide attempts during or after treatment. Worst-point suicidal ideation, history of multiple suicide attempts, treatment group (i.e., BCBT or TAU), suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period. 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David</creatorcontrib><title>Using Machine Learning to Predict Suicide Attempts in Military Personnel</title><title>Psychiatry research</title><addtitle>Psychiatry Res</addtitle><description>•Previous models used to predict suicide have very low sensitivity.•Current study used machine learning approach to predict suicide attempts using a clinical trial dataset.•Worst-point suicidal ideation, history of multiple suicide attempts, treatment group, suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period.•This sensitivity is higher than most suicide prediction models. Identifying predictors of suicide attempts is critical in intervention and prevention efforts, yet finding predictors has proven difficult due to the low base rate and underpowered statistical approaches. The objective of the current study was to use machine learning to examine predictors of suicidal behaviors among high-risk suicidal Soldiers who received outpatient mental health services in a randomized controlled trial of Brief Cognitive Behavioral Therapy for Suicide Prevention (BCBT) compared to treatment as usual (TAU). Self-report measures of clinical and demographic variables, administered prior to the start of outpatient treatment to 152 participants with recent suicidal thoughts and/or behaviors were analyzed using machine learning software to identify the best combination of variables for predicting suicide attempts during or after treatment. Worst-point suicidal ideation, history of multiple suicide attempts, treatment group (i.e., BCBT or TAU), suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period. This combination has higher sensitivity than many models that have previously been used to predict suicidal behavior. 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David</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Using Machine Learning to Predict Suicide Attempts in Military Personnel</atitle><jtitle>Psychiatry research</jtitle><addtitle>Psychiatry Res</addtitle><date>2020-12-01</date><risdate>2020</risdate><volume>294</volume><spage>113515</spage><epage>113515</epage><pages>113515-113515</pages><artnum>113515</artnum><issn>0165-1781</issn><eissn>1872-7123</eissn><abstract>•Previous models used to predict suicide have very low sensitivity.•Current study used machine learning approach to predict suicide attempts using a clinical trial dataset.•Worst-point suicidal ideation, history of multiple suicide attempts, treatment group, suicidogenic cognitions, and male sex were found, in combination, correctly classified 30.8% of patients who attempted suicide during the two-year follow-up period.•This sensitivity is higher than most suicide prediction models. 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source MEDLINE; ScienceDirect Journals (5 years ago - present)
subjects Adult
Army
Cognitive Behavioral Therapy - methods
Cognitive Behavioral Therapy - trends
Female
Follow-Up Studies
Humans
machine learning
Machine Learning - trends
Male
military
Military Personnel - psychology
prediction
Predictive Value of Tests
Self Report
Suicidal Ideation
Suicide
Suicide, Attempted - prevention & control
Suicide, Attempted - psychology
Suicide, Attempted - trends
title Using Machine Learning to Predict Suicide Attempts in Military Personnel
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