Related references
Note: Only part of the references are listed.The use of machine learning in the study of suicidal and non-suicidal self-injurious thoughts and behaviors: A systematic review
Taylor A. Burke et al.
JOURNAL OF AFFECTIVE DISORDERS (2019)
Predicting suicidal ideation in primary care: An approach to identify easily assessable key variables
Pascal Jordan et al.
GENERAL HOSPITAL PSYCHIATRY (2018)
Ten-year prediction of suicide death using Cox regression and machine learning in a nationwide retrospective cohort study in South Korea
Soo Beom Choi et al.
JOURNAL OF AFFECTIVE DISORDERS (2018)
Relationship between binge drinking experience and suicide attempts in Korean adolescents: based on the 2013 Korean Youth Risk Behavior Web-based Survey
Kyeong Hyang Byeon et al.
EPIDEMIOLOGY AND HEALTH (2018)
Risk Factors and Mediators of Suicidal Ideation Among Korean Adolescents
Yi Jin Kim et al.
CRISIS-THE JOURNAL OF CRISIS INTERVENTION AND SUICIDE PREVENTION (2018)
Risk Factors for Suicidal Thoughts and Behaviors: A Meta-Analysis of 50 Years of Research
Joseph C. Franklin et al.
PSYCHOLOGICAL BULLETIN (2017)
Classification of Suicide Attempts through a Machine Learning Algorithm Based on Multiple Systemic Psychiatric Scales.
Jihoon Oh et al.
FRONTIERS IN PSYCHIATRY (2017)
Risk factors of suicide attempt among people with suicidal ideation in South Korea: a cross-sectional study
Soo Beom Choi et al.
BMC PUBLIC HEALTH (2017)
Identifying a clinical signature of suicidality among patients with mood disorders: A pilot study using a machine learning approach
Ives Cavalcante Passos et al.
JOURNAL OF AFFECTIVE DISORDERS (2016)