Prediction of physical violence in schizophrenia with machine learning algorithms.

Journal: Psychiatry research
Published Date:

Abstract

Patients with schizophrenia have been shown to have an increased risk for physical violence. While certain features have been identified as risk factors, it has been difficult to integrate these variables to identify violent patients. The present study thus attempts to develop a clinically-relevant predictive tool. In a population of 275 schizophrenia patients, we identified 103 participants as violent and 172 as non-violent through electronic medical documentation, and conducted cross-sectional assessments to identify demographic, clinical, and sociocultural variables. Using these predictors, we utilized seven machine learning classification algorithms to predict for past instances of physical violence. Our classification algorithms predicted with significant accuracy compared to random discrimination alone, and had varying degrees of predictive power, as described by various performance measures. We determined that the random forest model performed marginally better than other algorithms, with an accuracy of 62% and an area under the receiver operator characteristic curve (AUROC) of 0.63. To summarize, machine learning classification algorithms are becoming increasingly valuable, though, optimization of these models is needed to better complement diagnostic decisions regarding early interventional measures to predict instances of physical violence.

Authors

  • Kevin Z Wang
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • Ali Bani-Fatemi
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College Street, Toronto, Ontario M5T 1R8, Canada; Institute of Medical Science, University of Toronto, Toronto, Ontario, Canada.
  • Christopher Adanty
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • Ricardo Harripaul
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • John Griffiths
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • Nathan Kolla
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • Philip Gerretsen
    Multimodal Imaging Group, Research Imaging Centre, Centre for Addiction and Mental Health, Toronto, Canada.
  • Ariel Graff
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College St, M5T1R8, Toronto, Canada.
  • Vincenzo De Luca
    Group for Suicide Studies, Centre for Addiction and Mental Health, 250 College Street, Toronto, Ontario M5T 1R8, Canada; Institute of Medical Science, University of Toronto, Toronto, Ontario, Canada; Department of Psychiatry, University of Toronto, Toronto, Ontario, Canada. Electronic address: vincenzo_deluca@camh.net.