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Using Boosted Machine Learning to Predict Suicidal Ideation by Socioeconomic Status among Adolescents.

Hwanjin ParkKounseok Lee
Published in: Journal of personalized medicine (2022)
(1) Background: This study aimed to use machine learning techniques to identify risk factors for suicidal ideation among adolescents and understand the association between these risk factors and socioeconomic status (SES); (2) Methods: Data from 54,948 participants were analyzed. Risk factors were identified by dividing groups by suicidal ideation and 3 SES levels. The influence of risk factors was confirmed using the synthetic minority over-sampling technique and XGBoost; (3) Results: Adolescents with suicidal thoughts experienced more sadness, higher stress levels, less happiness, and higher anxiety than those without. In the high SES group, academic achievement was a major risk factor for suicidal ideation; in the low SES group, only emotional factors such as stress and anxiety significantly contributed to suicidal ideation; (4) Conclusions: SES plays an important role in the mental health of adolescents. Improvements in SES in adolescence may resolve their negative emotions and reduce the risk of suicide.
Keyphrases
  • risk factors
  • machine learning
  • mental health
  • young adults
  • depressive symptoms
  • physical activity
  • sleep quality
  • electronic health record
  • mental illness