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Media type:
E-Article
Title:
A machine learning approach to identification of self-harm and suicidal ideation among military and police Veterans
Contributor:
Colic, Sinisa;
He, Jiang Chen;
Richardson, J. Don;
Cyr, Kate St.;
Reilly, James P.;
Hasey, Gary M.
Published:
University of Toronto Press Inc. (UTPress), 2022
Published in:
Journal of Military, Veteran and Family Health, 8 (2022) 1, Seite 56-67
Language:
English
DOI:
10.3138/jmvfh-2021-0035
ISSN:
2368-7924
Origination:
Footnote:
Description:
LAY SUMMARY Combat Veterans are vulnerable to suicidal thoughts and behaviour. Many who die by suicide deny having suicidal ideation (SI). Typically, researchers try to find variables indicating the presence of SI using traditional statistical approaches. These approaches do not possess the capacity to detect highly complex multivariable interactions. In contrast, machine learning (ML) is designed to detect such patterns and can consequently yield much higher predictive accuracy. In this study, the authors trained ML algorithms using 192 variables extracted from questionnaires administered to 738 Veterans and serving personnel to detect the presence of self-harm and SI (SHSI). Using the 10 most predictive non-suicide-related items, the ML algorithms could detect SHSI with 75.3% accuracy. Most of these items reflect psychological phenomena that can change quickly over time, allowing repeated risk reassessment from day to day. The study’s findings suggest that ML methods may play an important role in the discovery, within a large data set, of predictive patterns that might be useful in suicide risk assessment.