Prevalence and risk factors of suicidal ideation amongst unaccompanied young refugees: a machine learning approach
Prevalence and risk factors of suicidal ideation amongst unaccompanied young refugees: a machine learning approach

Prevalence and risk factors of suicidal ideation amongst unaccompanied young refugees: a machine learning approach

Eur Child Adolesc Psychiatry. 2025 Sep 12. doi: 10.1007/s00787-025-02828-0. Online ahead of print.

ABSTRACT

BACKGROUND: Suicidality is a major public health concern worldwide. Evidence on the prevalence and risk factors of suicidality amongst unaccompanied young refugees (UYRs), a population already at risk for mental health disorders, is scarce.

METHODS: Given the complexity of individual risk factor constellations influencing suicidality, machine learning (ML) methods offer a statistical approach that can detect complex relations within the data. Four ML classifiers, (logistic regression (LR), random forest (RF), support vector machines (SVM), and extreme gradient boosting (XGB)) were trained on a dataset of n = 623 UYRs (Mage=16.77, SD = 1.34, range: 12-21), retrieved from the large-scale randomized controlled trial Better Care to predict suicidal ideation. Features used in the classifiers were age, gender, asylum status, having contact with the family, and whether parents are alive as well as clinically elevated post-traumatic stress symptoms (PTSS), depressive symptoms and past suicide attempts. The classifiers were then tested on the independent dataset of n = 94 UYRs (Mage=16.31, SD = 2.03, range: 5-21) retrieved from the screening tool porta project to examine their predictive performance.

RESULTS: The prevalence of past-week suicidal ideation in the combined sample of N = 717 was 18.13%. All classifiers yielded good predictive performance (accuracy 0.734-0.840, sensitivity 0.857, AUC 0.853-0.880). The most relevant features were past suicide attempts, PTSS and depressive symptoms as risk factors, and having a living mother as protective factor.

CONCLUSIONS: Suicidal ideation is prevalent amongst UYRs, and using ML approaches, the classifiers were able to classify roughly 85% of the cases with suicidal ideation in the past week correctly as suicidal. Building on the findings of this study, screening for suicidality could be further improved by implementing ML classifiers in the assessment to highlight potential at risk cases early, and suitable interventions be developed.

PMID:40936040 | DOI:10.1007/s00787-025-02828-0