Predicting Suicidal Ideation Among Youths With Autism Spectrum Disorder: An Advanced Machine Learning Study.

Publication date: Apr 22, 2025

This study aimed to predict suicidal ideation among youth with autism spectrum disorder (ASD) by applying machine learning techniques. A cross-sectional sample of 368 ASD-diagnosed young people (aged 18-24 years) was recruited, and 34 candidate predictors-including sociodemographic characteristics, psychiatric symptoms (e. g., anxiety problems and depressive symptoms), behavioural measures (e. g., bullying victimization and insomnia severity) and adverse childhood experiences-were assessed using standardized instruments and parent-report checklists. After listwise deletion of missing data, recursive feature elimination (RFE) with a random forest wrapper was performed to identify the five most influential predictors. Four classification algorithms (logistic regression, random forest, eXtreme Gradient Boosting [XGBoost] and support vector machine [SVM]) were then trained on a 70/30 stratified split and evaluated on the hold-out test set using area under the curve (AUC), sensitivity, specificity, positive predictive value, negative predictive value and accuracy. RFE identified anxiety problems, insomnia, bullying victimization, age and depression (PHQ-9) as the top predictors. Logistic regression achieved an AUC of 0. 943 (sensitivity = 0. 773, specificity = 0. 957 and accuracy = 0. 922), random forest an AUC of 0. 948 (sensitivity = 0. 727, specificity = 0. 989 and accuracy = 0. 939), XGBoost an AUC of 0. 930 (sensitivity = 0. 772, specificity = 0. 989 and accuracy = 0. 947) and SVM an AUC of 0. 942 (sensitivity = 0. 772, specificity = 0. 978 and accuracy = 0. 939). Across models, anxiety and insomnia emerged as the two most important risk factors, and XGBoost demonstrated the best overall balance of performance metrics, yielding the highest accuracy. Gradient-boosted tree models were thus shown to effectively integrate multidimensional data to predict suicidality in autistic youth, highlighting anxiety and sleep disturbances as critical targets for personalized risk assessment and prevention efforts.

Concepts Keywords
24years Adolescent
Algorithms anxiety
Autism Autism Spectrum Disorder
Sleep Bullying
Victimization Cross-Sectional Studies
depression
Female
Humans
learning disability
Machine Learning
machine learning
Male
Risk Factors
Suicidal Ideation
suicide
Young Adult

Semantics

Type Source Name
disease MESH Suicidal Ideation
disease MESH Autism Spectrum Disorder
disease MESH anxiety
disease MESH depressive symptoms
disease MESH bullying
disease MESH insomnia
disease MESH adverse childhood experiences
drug DRUGBANK Flunarizine
drug DRUGBANK Isoxaflutole
disease MESH learning disability
disease MESH suicide

Original Article

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