Public Health

Comprehensive Summary

This study used data from a Slovenian nationwide community sample (N = 2,989) via online questionnaire to build and validate machine-learning models for indirect screening of both suicidal ideation and moderate-to-severe depression, including in individuals with subthreshold insomnia. The predictive performance of the SI model was 0.78 in the insomnia group and 0.80 in the non-insomnia group; for the depression model it was 0.79 and 0.82 respectively.

Outcomes and Implications

The findings suggest that ML-based indirect screening tools (using socio-demographics, coping strategies, behavioral changes) can effectively detect SI and depression even in people with sleep complaints, offering a feasible, time-efficient mechanism to identify at-risk individuals and enabling earlier intervention in settings where sleep disturbances are a common presenting complaint.

Our mission is to

Connect medicine with AI innovation.

No spam. Only the latest AI breakthroughs, simplified and relevant to your field.

Our mission is to

Connect medicine with AI innovation.

No spam. Only the latest AI breakthroughs, simplified and relevant to your field.

Our mission is to

Connect medicine with AI innovation.

No spam. Only the latest AI breakthroughs, simplified and relevant to your field.

AIIM Research

Articles

© 2025 AIIM. Created by AIIM IT Team

AIIM Research

Articles

© 2025 AIIM. Created by AIIM IT Team

AIIM Research

Articles

© 2025 AIIM. Created by AIIM IT Team