4.7 Article

Detecting suicidal risk using MMPI-2 based on machine learning algorithm

Related references

Note: Only part of the references are listed.
Article Psychiatry

Association of Borderline Personality Disorder Criteria With Suicide Attempts Findings From the Collaborative Longitudinal Study of Personality Disorders Over 10 Years of Follow-up

Shirley Yen et al.

Summary: Borderline personality disorder (BPD) and specific criteria such as identity disturbance, chronic feelings of emptiness, and frantic efforts to avoid abandonment were found to be significantly associated with prospectively observed suicide attempts. These features may be overlooked in clinical assessment of suicide risk in individuals with BPD.

JAMA PSYCHIATRY (2021)

Editorial Material Psychiatry

Machine Learning for Suicide Research-Can It Improve Risk Factor Identification?

Seena Fazel et al.

JAMA PSYCHIATRY (2020)

Article Clinical Neurology

Detecting risk of suicide attempts among Chinese medical college students using a machine learning algorithm

Yanmei Shen et al.

JOURNAL OF AFFECTIVE DISORDERS (2020)

Article Psychology, Applied

Machine learning in suicide science: Applications and ethics

Kathryn P. Linthicum et al.

BEHAVIORAL SCIENCES & THE LAW (2019)

Article Psychology

Machine Learning Approaches for Clinical Psychology and Psychiatry

Dominic B. Dwyer et al.

Annual Review of Clinical Psychology (2018)

Article Psychology, Clinical

Predicting Risk of Suicide Attempts Over Time Through Machine Learning

Colin G. Walsh et al.

CLINICAL PSYCHOLOGICAL SCIENCE (2017)

Review Multidisciplinary Sciences

Machine learning: Trends, perspectives, and prospects

M. I. Jordan et al.

SCIENCE (2015)

Article Psychiatry

The neurobiology of suicide

Kees van Heeringen et al.

LANCET PSYCHIATRY (2014)

Article Psychiatry

The psychology of suicidal behaviour

Rory C. O'Connor et al.

LANCET PSYCHIATRY (2014)

Article Psychology, Clinical

Problem Solving Moderates the Effects of Life Event Stress and Chronic Stress on Suicidal Behaviors in Adolescence

Kelly E. Grover et al.

JOURNAL OF CLINICAL PSYCHOLOGY (2009)

Article Computer Science, Interdisciplinary Applications

Empirical characterization of random forest variable importance measures

Kelfie J. Archer et al.

COMPUTATIONAL STATISTICS & DATA ANALYSIS (2008)

Article Psychiatry

Low control at work and the risk of suicide in Japanese men: A prospective cohort study

Akizumi Tsutsumi et al.

PSYCHOTHERAPY AND PSYCHOSOMATICS (2007)

Article Biochemical Research Methods

Gene selection and classification of microarray data using random forest -: art. no. 3

R Díaz-Uriarte et al.

BMC BIOINFORMATICS (2006)

Review Neurosciences

Neurobiology of suicidal behaviour

JJ Mann

NATURE REVIEWS NEUROSCIENCE (2003)