BMC Psychiatry (Feb 2022)

Identifying long-term and imminent suicide predictors in a general population and a clinical sample with machine learning

  • Lloyd D. Balbuena,
  • Marilyn Baetz,
  • Joseph Andrew Sexton,
  • Douglas Harder,
  • Cindy Xin Feng,
  • Kerstina Boctor,
  • Candace LaPointe,
  • Elizabeth Letwiniuk,
  • Arash Shamloo,
  • Hemant Ishwaran,
  • Ann John,
  • Anne Lise Brantsæter

DOI
https://doi.org/10.1186/s12888-022-03702-y
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 11

Abstract

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Abstract Background Machine learning (ML) is increasingly used to predict suicide deaths but their value for suicide prevention has not been established. Our first objective was to identify risk and protective factors in a general population. Our second objective was to identify factors indicating imminent suicide risk. Methods We used survival and ML models to identify lifetime predictors using the Cohort of Norway (n=173,275) and hospital diagnoses in a Saskatoon clinical sample (n=12,614). The mean follow-up times were 17 years and 3 years for the Cohort of Norway and Saskatoon respectively. People in the clinical sample had a longitudinal record of hospital visits grouped in six-month intervals. We developed models in a training set and these models predicted survival probabilities in held-out test data. Results In the general population, we found that a higher proportion of low-income residents in a county, mood symptoms, and daily smoking increased the risk of dying from suicide in both genders. In the clinical sample, the only predictors identified were male gender and older age. Conclusion Suicide prevention probably requires individual actions with governmental incentives. The prediction of imminent suicide remains highly challenging, but machine learning can identify early prevention targets.

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