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Developing and Validating a Machine Learning Algorithm to Predict the Risk of Incident Opioid Use Disorder Among

Jabed Al Faysal1,2, Weihsuan Lo-Ciganic3,4,5, Walid F Gellad3,4

  • 1Department of Pharmaceutical Outcomes & Policy, University of Florida, 1889 Museum Road, Malachowsky Hall, Suite 6300, Gainesville, FL, 32611, United States, 12566946603.

Journal of Medical Internet Research
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Summary
This summary is machine-generated.

Machine learning models can predict opioid use disorder (OUD) risk in patients starting opioid therapy. This approach enhances early identification and intervention for OUD, a critical public health issue.

Keywords:
OneFlorida+external validationmachine learningopioid use disorderrisk stratification

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Area of Science:

  • Clinical Informatics
  • Public Health
  • Machine Learning in Healthcare

Background:

  • Opioid use disorder (OUD) is a major public health crisis in the U.S.
  • Current screening for OUD risk is limited and lacks individualization.
  • Machine learning (ML) offers potential for improved OUD risk prediction.

Purpose of the Study:

  • Develop and validate an ML model to predict 3-month incident OUD risk in adults initiating opioid therapy.
  • Stratify patients into clinically actionable risk groups using electronic health record (EHR) data.

Main Methods:

  • Utilized OneFlorida+ EHR data (2017-2022) for model development and UPMC data for external validation.
  • Included 182,083 adults without prior OUD, cancer, or overdose history receiving opioid prescriptions.
  • Developed and compared elastic net, LASSO, GBM, and random forest models using 183 predictors.

Main Results:

  • The Gradient Boosting Machine (GBM) model demonstrated strong performance (C-statistic=0.879) in validation, identifying key predictors like age and pain history.
  • The top risk decile identified ~68% of OUD cases with a positive predictive value of 3.26%.
  • External validation on UPMC data confirmed the GBM model's discriminative ability (C-statistic=0.756).

Conclusions:

  • An ML algorithm developed using EHR data effectively predicts and stratifies incident OUD risk.
  • The model shows promise for cross-health system application to inform early OUD interventions.
  • This approach can enhance OUD prevention strategies in clinical settings.