Identifying patients with opioid use disorder using International Classification of Diseases (ICD) codes: Challenges and opportunities

Author:

Osterhage Katie P.1ORCID,Hser Yih‐Ing2,Mooney Larissa J.23,Sherman Seth4,Saxon Andrew J.56,Ledgerwood Maja7,Holtzer Caleb C.8,Gehring Margaret A.9,Clingan Sarah E.2ORCID,Curtis Megan E.210,Baldwin Laura‐Mae1

Affiliation:

1. Department of Family Medicine University of Washington Seattle Washington USA

2. Department of Psychiatry and Biobehavioral Sciences University of California Los Angeles California USA

3. Veterans Affairs Greater Los Angeles Healthcare System Los Angeles California USA

4. The Emmes Company Rockville Maryland USA

5. Department of Psychiatry and Behavioral Sciences University of Washington School of Medicine Seattle Washington USA

6. Center of Excellence in Substance Addiction Treatment and Education Veterans Affairs Puget Sound Health Care System Seattle Washington USA

7. Rural Social Service Solutions, LLC New Meadows Idaho USA

8. Providence Northeast Washington Medical Group Colville Washington USA

9. St. Mary's Health Cottonwood Idaho USA

10. Department of Emergency Medicine University of Florida College of Medicine Jacksonville Florida USA

Abstract

AbstractBackground and AimsInternational Classification of Diseases (ICD) diagnosis codes are often used in research to identify patients with opioid use disorder (OUD), but their accuracy for this purpose is not fully evaluated. This study describes application of ICD‐10 diagnosis codes for opioid use, dependence and abuse from an electronic health record (EHR) data extraction using data from the clinics' OUD patient registries and clinician/staff EHR entries.DesignCross‐sectional observational study.SettingFour rural primary care clinics in Washington and Idaho, USA.Participants307 patients.MeasurementsThis study used three data sources from each clinic: (1) a limited dataset extracted from the EHR, (2) a clinic‐based registry of patients with OUD and (3) the clinician/staff interface of the EHR (e.g. progress notes, problem list). Data source one included records with six commonly applied ICD‐10 codes for opioid use, dependence and abuse: F11.10 (opioid abuse, uncomplicated), F11.20 (opioid dependence, uncomplicated), F11.21 (opioid dependence, in remission), F11.23 (opioid dependence with withdrawal), F11.90 (opioid use, unspecified, uncomplicated) and F11.99 (opioid use, unspecified with unspecified opioid‐induced disorder). Care coordinators used data sources two and three to categorize each patient identified in data source one: (1) confirmed OUD diagnosis, (2) may have OUD but no confirmed OUD diagnosis, (3) chronic pain with no evidence of OUD and (4) no evidence for OUD or chronic pain.FindingsF11.10, F11.21 and F11.99 were applied most frequently to patients who had clinical diagnoses of OUD (64%, 89% and 79%, respectively). F11.20, F11.23 and F11.90 were applied to patients who had a diagnostic mix of OUD and chronic pain without OUD. The four clinics applied codes inconsistently.ConclusionsLack of uniform application of ICD diagnosis codes make it challenging to use diagnosis code data from EHR to identify a research population of persons with opioid use disorder.

Funder

National Drug Abuse Treatment Clinical Trials Network

Publisher

Wiley

Subject

Psychiatry and Mental health,Medicine (miscellaneous)

Reference36 articles.

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