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Predicting self-harm within six months after initial presentation to youth mental health services: A machine learning study
- Source :
- PLoS ONE, PLoS ONE, Vol 15, Iss 12, p e0243467 (2020)
- Publication Year :
- 2020
-
Abstract
- BackgroundA priority for health services is to reduce self-harm in young people. Predicting self-harm is challenging due to their rarity and complexity, however this does not preclude the utility of prediction models to improve decision-making regarding a service response in terms of more detailed assessments and/or intervention. The aim of this study was to predict self-harm within six-months after initial presentation.MethodThe study included 1962 young people (12–30 years) presenting to youth mental health services in Australia. Six machine learning algorithms were trained and tested with ten repeats of ten-fold cross-validation. The net benefit of these models were evaluated using decision curve analysis.ResultsOut of 1962 young people, 320 (16%) engaged in self-harm in the six months after first assessment and 1642 (84%) did not. The top 25% of young people as ranked by mean predicted probability accounted for 51.6% - 56.2% of all who engaged in self-harm. By the top 50%, this increased to 82.1%-84.4%. Models demonstrated fair overall prediction (AUROCs; 0.744–0.755) and calibration which indicates that predicted probabilities were close to the true probabilities (brier scores; 0.185–0.196). The net benefit of these models were positive and superior to the ‘treat everyone’ strategy. The strongest predictors were (in ranked order); a history of self-harm, age, social and occupational functioning, sex, bipolar disorder, psychosis-like experiences, treatment with antipsychotics, and a history of suicide ideation.ConclusionPrediction models for self-harm may have utility to identify a large sub population who would benefit from further assessment and targeted (low intensity) interventions. Such models could enhance health service approaches to identify and reduce self-harm, a considerable source of distress, morbidity, ongoing health care utilisation and mortality.
- Subjects :
- Male
Bipolar Disorder
Epidemiology
Psychological intervention
Poison control
Social Sciences
computer.software_genre
Suicide prevention
Occupational safety and health
Machine Learning
Self Harm
Mathematical and Statistical Techniques
Cognition
Health care
Medicine and Health Sciences
Psychology
Child
Suicidal ideation
education.field_of_study
Multidisciplinary
Statistics
Suicide
Area Under Curve
Physical Sciences
Medicine
Female
medicine.symptom
Antipsychotic Agents
Research Article
Adult
Mental Health Services
Computer and Information Sciences
Adolescent
Science
Population
Decision Making
Machine learning
Research and Analysis Methods
Suicidal Ideation
Young Adult
Artificial Intelligence
Mental Health and Psychiatry
medicine
Humans
Statistical Methods
education
business.industry
Cognitive Psychology
Biology and Life Sciences
Mental health
Psychotic Disorders
ROC Curve
Medical Risk Factors
Cognitive Science
Artificial intelligence
business
computer
Self-Injurious Behavior
Mental Health Therapies
Mathematics
Forecasting
Neuroscience
Subjects
Details
- ISSN :
- 19326203
- Volume :
- 15
- Issue :
- 12
- Database :
- OpenAIRE
- Journal :
- PloS one
- Accession number :
- edsair.doi.dedup.....ceed87d55f57fd6e14d257c8d8deb8e8