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Machine Learning Reveals Traits of High Mental Health Utilizers

Machine learning tools analyzed EHR data and identified characteristics of high utilizers for mental health services.

Machine learning reveals traits of high mental health utilizers

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By Jessica Kent

- After applying machine learning to EHR data, researchers found that dropping out of high school, having schizophrenia, or being diagnosed with a co-occurring personality disorder increases the likelihood of someone becoming a high utilizer of mental health services.

The study, published in the Journal of Health Care for the Poor and Underserved, is the first of its kind to examine high utilizer trends in an academic safety net psychiatric hospital in a large, diverse region.

A high utilizer is someone who has been admitted to an inpatient psychiatric hospital three or more times within one year. According to the research team, evidence suggests that high utilizers of the healthcare system are more likely to have mental illness, to be from socially disadvantaged groups, and to have limited access to community-based services.