PROVISION OF SERVICES TO PEOPLE WITH MENTAL ILLNESSES: Edited by Giovanni de Girolamo and Thomas BeckerCan machine-learning methods really help predict suicide?McHugh, Catherine M.a; Large, Matthew M.b Author Information aBrain and Mind Centre, University of Sydney bSchool of Psychiatry, University of New South Wales, Sydney, New South Wales, Australia Correspondence to Dr Catherine M. McHugh, Brain and Mind Centre, University of Sydney, Mallett Street, Camperdown 2050, NSW, Australia. Tel: +61 02 9351 0774; e-mail: [email protected] Current Opinion in Psychiatry: July 2020 - Volume 33 - Issue 4 - p 369-374 doi: 10.1097/YCO.0000000000000609 Buy Metrics Abstract Purpose of review In recent years there has been interest in the use of machine learning in suicide research in reaction to the failure of traditional statistical methods to produce clinically useful models of future suicide. The current review summarizes recent prediction studies in the suicide literature including those using machine learning approaches to understand what value these novel approaches add. Recent findings Studies using machine learning to predict suicide deaths report area under the curve that are only modestly greater than, and sensitivities that are equal to, those reported in studies using more conventional predictive methods. Positive predictive value remains around 1% among the cohort studies with a base rate that was not inflated by case–control methodology. Summary Machine learning or artificial intelligence may afford opportunities in mental health research and in the clinical care of suicidal patients. However, application of such techniques should be carefully considered to avoid repeating the mistakes of existing methodologies. Prediction studies using machine-learning methods have yet to make a major contribution to our understanding of the field and are unproven as clinically useful tools. Copyright © 2020 Wolters Kluwer Health, Inc. All rights reserved.