Individualized Prospective Prediction of Opioid Use Disorder

Author:

Liu Yang S.12ORCID,Kiyang Lawrence2,Hayward Jake3ORCID,Zhang Yanbo1ORCID,Metes Dan2,Wang Mengzhe2,Svenson Lawrence W.2456,Talarico Fernanda1ORCID,Chue Pierre1,Li Xin-Min1,Greiner Russell178,Greenshaw Andrew J.1,Cao Bo12ORCID

Affiliation:

1. Department of Psychiatry, University of Alberta, Edmonton, Alberta, Canada

2. Analytics and Performance Reporting Branch, Ministry of Health, Government of Alberta, Edmonton, Alberta, Canada

3. Department of Emergency Medicine, University of Alberta, Edmonton, Alberta, Canada

4. School of Public Health, University of Alberta, Edmonton, Alberta, Canada

5. Division of Preventive Medicine, University of Alberta, Edmonton, Alberta, Canada

6. Department of Community Health Sciences, University of Calgary, Calgary, Alberta, Canada

7. Department of Computing Science, University of Alberta, Edmonton, Alberta, Canada

8. Alberta Machine Intelligence Institute (Amii), Edmonton, Alberta, Canada

Abstract

Objective Opioid use disorder (OUD) is a chronic relapsing disorder with a problematic pattern of opioid use, affecting nearly 27 million people worldwide. Machine learning (ML)-based prediction of OUD may lead to early detection and intervention. However, most ML prediction studies were not based on representative data sources and prospective validations, limiting their potential to predict future new cases. In the current study, we aimed to develop and prospectively validate an ML model that could predict individual OUD cases based on representative large-scale health data. Method We present an ensemble machine-learning model trained on a cross-linked Canadian administrative health data set from 2014 to 2018 ( n  =  699,164), with validation of model-predicted OUD cases on a hold-out sample from 2014 to 2018 ( n  =  174,791) and prospective prediction of OUD cases on a non-overlapping sample from 2019 ( n  =  316,039). We used administrative records of OUD diagnosis for each subject based on International Classification of Diseases (ICD) codes. Results With 6409 OUD cases in 2019 (mean [SD], 45.34 [14.28], 3400 males), our model prospectively predicted OUD cases at a high accuracy (balanced accuracy, 86%, sensitivity, 93%; specificity 79%). In accord with prior findings, the top risk factors for OUD in this model were opioid use indicators and a history of other substance use disorders. Conclusion Our study presents an individualized prospective prediction of OUD cases by applying ML to large administrative health datasets. Such prospective predictions based on ML would be essential for potential future clinical applications in the early detection of OUD.

Funder

Brain and Behavior Research Foundation

Alberta Innovates

Mitacs

Alberta Synergies in Alzheimer’s and Related Disorders (SynAD) program

Simon & Martina Sochatsky Fund for Mental Health

University of Alberta Hospital Foundation

Canada Research Chairs program

Mental Health Foundation

Publisher

SAGE Publications

Subject

Psychiatry and Mental health

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