학술논문

Prediction of Repeated Self-Harm in Six Months: Comparison of Traditional Psychometrics With Random Forest Algorithm.
Document Type
Article
Source
Omega: Journal of Death & Dying; Mar2024, Vol. 88 Issue 4, p1403-1429, 27p
Subject
Machine learning
Comparative studies
Algorithms
Suicide risk factors
Confidence intervals
Random forest algorithms
Psychometrics
Risk assessment
Descriptive statistics
Prediction models
Logistic regression analysis
Self-mutilation
Language
ISSN
00302228
Abstract
Suicidal risk has been a significant mental health problem. However, the predictive ability for repeated self-harm (SH) has not improved over the past decades. This study thus aimed to explore a potential tool with theoretical accommodation and clinical application by employing traditional logistic regression (LR) and newly developed machine learning, random forest algorithm (RF). Starting with 89 items from six commonly used scales (i.e., proximal suicide risk factors) as preliminary predictors, both LR and RF resulted in a better solution with much fewer items in two phases of item selections and analyses, with prediction accuracy 88.6% and 79.8%, respectively. A combination with 12 selected items, named LR-12, well predicted repeated self-harm in 6-month follow-up with satisfactory performance (AUC = 0.84, 95% CI: 0.76–0.92; cut-off point by 1/2 with sensitivity 81.1% and specificity 74.0%). The psychometrically appealing LR-12 could be used as a screening scale for suicide risk assessment. [ABSTRACT FROM AUTHOR]