A Comparison of Veterans with Problematic Opioid Use Identified through Natural Language Processing of Clinical Notes versus Using Diagnostic Codes

Author:

Workman Terri Elizabeth12,Kupersmith Joel3,Ma Phillip12ORCID,Spevak Christopher3,Sandbrink Friedhelm1,Cheng Yan12ORCID,Zeng-Treitler Qing12ORCID

Affiliation:

1. Washington DC VA Medical Center, Washington, DC 20422, USA

2. Biomedical Informatics Center, The George Washington University, Washington, DC 20037, USA

3. School of Medicine, Georgetown University, Washington, DC 20007, USA

Abstract

Opioid use disorder is known to be under-coded as a diagnosis, yet problematic opioid use can be documented in clinical notes, which are included in electronic health records. We sought to identify problematic opioid use from a full range of clinical notes and compare the demographic and clinical characteristics of patients identified as having problematic opioid use exclusively in clinical notes to patients documented through ICD opioid use disorder diagnostic codes. We developed and applied a natural language processing (NLP) tool that combines rule-based pattern analysis and a trained support vector machine to the clinical notes of a patient cohort (n = 222,371) from two Veteran Affairs service regions to identify patients with problematic opioid use. We also used a set of ICD diagnostic codes to identify patients with opioid use disorder from the same cohort. The NLP tool achieved 96.6% specificity, 90.4% precision/PPV, 88.4% sensitivity/recall, and 94.4% accuracy on unseen test data. NLP exclusively identified 57,331 patients; 6997 patients had positive ICD code identifications. Patients exclusively identified through NLP were more likely to be women. Those identified through ICD codes were more likely to be male, younger, have concurrent benzodiazepine prescriptions, more comorbidities, and more care encounters, and were less likely to be married. Patients in both these groups had substantially elevated comorbidity levels compared with patients not documented through either method as experiencing problematic opioid use. Clinicians may be reluctant to code for opioid use disorder. It is therefore incumbent on the healthcare team to search for documentation of opioid concerns within clinical notes.

Funder

United States Department of Veteran Affairs HSRD IIR

Publisher

MDPI AG

Reference36 articles.

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4. Trends in comorbid opioid and stimulant use disorders among Veterans receiving care from the Veterans Health Administration, 2005–2019;Warfield;Drug Alcohol Depend.,2022

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