Abstract

BackgroundOpioid misuse screening in hospitals is resource-intensive and rarely done. Many hospitalized patients are never offered opioid treatment. An automated approach leveraging routinely captured electronic health record (EHR) data may be easier for hospitals to institute. We previously derived and internally validated an opioid classifier in a separate hospital setting. The aim is to externally validate our previously published and open-source machine-learning classifier at a different hospital for identifying cases of opioid misuse.MethodsAn observational cohort of 56,227 adult hospitalizations was examined between October 2017 and December 2019 during a hospital-wide substance use screening program with manual screening. Manually completed Drug Abuse Screening Test served as the reference standard to validate a convolutional neural network (CNN) classifier with coded word embedding features from the clinical notes of the EHR. The opioid classifier utilized all notes in the EHR and sensitivity analysis was also performed on the first 24 h of notes. Calibration was performed to account for the lower prevalence than in the original cohort.ResultsManual screening for substance misuse was completed in 67.8% (n = 56,227) with 1.1% (n = 628) identified with opioid misuse. The data for external validation included 2,482,900 notes with 67,969 unique clinical concept features. The opioid classifier had an AUC of 0.99 (95% CI 0.99–0.99) across the encounter and 0.98 (95% CI 0.98–0.99) using only the first 24 h of notes. In the calibrated classifier, the sensitivity and positive predictive value were 0.81 (95% CI 0.77–0.84) and 0.72 (95% CI 0.68–0.75). For the first 24 h, they were 0.75 (95% CI 0.71–0.78) and 0.61 (95% CI 0.57–0.64).ConclusionsOur opioid misuse classifier had good discrimination during external validation. Our model may provide a comprehensive and automated approach to opioid misuse identification that augments current workflows and overcomes manual screening barriers.

Highlights

  • Opioid misuse screening in hospitals is resource-intensive and rarely done

  • Our convolutional neural network (CNN) opioid classifier had 79% sensitivity and 91% specificity, and our results showed that clinical notes from the hospitalization can be used to identify opioid misuse and serve as an alternative to manual screening by staff

  • During the study period, there were 82,881 unplanned adult hospitalizations and DAST screening for substance misuse was completed in 67.8% (n = 56,227) with 1.1% (n = 628) of the screened cohort identified with opioid misuse (Fig. 1)

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Summary

Introduction

Opioid misuse screening in hospitals is resource-intensive and rarely done. Many hospitalized patients are never offered opioid treatment. We previously derived and internally validated an opioid classifier in a separate hospital setting. The aim is to externally validate our previously published and open-source machinelearning classifier at a different hospital for identifying cases of opioid misuse. Many patients engage the health system for the Afshar et al Addict Sci Clin Pract (2021) 16:19 first time after a physical health complication related to opioid misuse such as endocarditis or respiratory infection [3]. Large treatment gaps continue to exist as hospitals serve a high concentration of individuals with opioid misuse who do not receive screening, especially when admitted for another condition [4]. Conventional screening methods are resourceintensive and face significant barriers to successful implementation in a hospital setting [8]

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