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Predictive Models for Time to First Opioid Use Disorder or Opioid Overdose Among Older Adults.

Created on 17 Jul 2026

Authors

Chien-Wei Chiang, Guy Brock, Siegfried Schmidt, Roger B Fillingim, Stephan Schmidt, Yu-Jung Jenny Wei

Published in

Journal of general internal medicine. Jul 16, 2026. Epub Jul 16, 2026.

Abstract

Limited data exist on predictive models incorporating patient-reported and claims-based measures to identify older adults at risk for opioid use disorder (OUD) or opioid overdose (OD).
To develop a predictive model and identify predictors of time to first OUD or OD for older adults.
Prognostic study using data from Health and Retirement Study (HRS) participants with linked Medicare claims between January 1, 2006, and December 31, 2021.
Older (≥ 65 years) HRS-Medicare participants with chronic pain and prescribed opioids within 1 year before their first biennial HRS survey.
Forty potential predictors derived from Medicare claims data and HRS surveys.
Incident diagnosis of OUD or OD was ascertained from Medicare claims data. Four survival models-traditional Cox, Cox with backward variable selection, LASSO-penalized Cox, and survival random forest-were used to account for time-fixed and time-varying predictors to predict time to first OUD or OD.
Of 4190 older adults, 181 experienced incident OUD or OD during a mean (SD) follow-up of 6.1 (4.0) years. All 4 survival models performed equally, with mean C statistics from 0.753 (0.043) to 0.849 (0.018) and from 0.723 (0.054) to 0.790 (0.042) in training and testing sets, respectively, in predicting time to first OUD or OD during follow-up. Across all models, the top leading predictors of OUD or OD for older adults were duration of opioid use, uncontrolled pain, and use of other central nervous system medications.
In this prognostic study, traditional Cox and machine learning predictive models developed using patient-reported and claims-based measures performed equally well in predicting time to first OUD or OD and identified predictors for older adults. These models may be useful to monitor and identify older adults at risk for OUD or OD for early intervention.

PMID:
42463630
Bibliographic data and abstract were imported from PubMed on 17 Jul 2026.

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