Impact of Potential Case Misclassification by Administrative Diagnostic Codes on Outcome Assessment of Observational Study for People Who Inject Drugs

Author:

Goodman-Meza David123ORCID,Goto Michihiko45ORCID,Salimian Anabel1,Shoptaw Steven6,Bui Alex A T7,Gordon Adam J89,Goetz Matthew B23

Affiliation:

1. Division of Infectious Diseases, David Geffen School of Medicine at UCLA , Los Angeles, California, USA

2. David Geffen School of Medicine at UCLA , Los Angeles, California , USA

3. Greater Los Angeles Veterans Health Administration , Los Angeles, California , USA

4. University of Iowa , Iowa City, Iowa , USA

5. Iowa City VA Medical Center , Iowa City, Iowa , USA

6. Department of Family Medicine, David Geffen School of Medicine at UCLA , Los Angeles, California , USA

7. Medical & Imaging Informatics (MII) Group, Department of Radiological Sciences, UCLA , Los Angeles, California , USA

8. Informatics, Decision-Enhancement, and Analytic Sciences (IDEAS) Center, VA Salt Lake City Health Care System , Salt Lake City, Utah , USA

9. Program for Addiction Research, Clinical Care, Knowledge, and Advocacy (PARCKA), Division of Epidemiology, Department of Internal Medicine, University of Utah School of Medicine , Salt Lake City, Utah , USA

Abstract

Abstract Introduction Initiation of medications for opioid use disorder (MOUD) within the hospital setting may improve outcomes for people who inject drugs (PWID) hospitalized because of an infection. Many studies used International Classification of Diseases (ICD) codes to identify PWID, although these may be misclassified and thus, inaccurate. We hypothesized that bias from misclassification of PWID using ICD codes may impact analyses of MOUD outcomes. Methods We analyzed a cohort of 36 868 cases of patients diagnosed with Staphylococcus aureus bacteremia at 124 US Veterans Health Administration hospitals between 2003 and 2014. To identify PWID, we implemented an ICD code–based algorithm and a natural language processing (NLP) algorithm for classification of admission notes. We analyzed outcomes of prescribing MOUD as an inpatient using both approaches. Our primary outcome was 365-day all-cause mortality. We fit mixed-effects Cox regression models with receipt or not of MOUD during the index hospitalization as the primary predictor and 365-day mortality as the outcome. Results NLP identified 2389 cases as PWID, whereas ICD codes identified 6804 cases as PWID. In the cohort identified by NLP, receipt of inpatient MOUD was associated with a protective effect on 365-day survival (adjusted hazard ratio, 0.48; 95% confidence interval, .29–.81; P < .01) compared with those not receiving MOUD. There was no significant effect of MOUD receipt in the cohort identified by ICD codes (adjusted hazard ratio, 1.00; 95% confidence interval, .77–1.30; P = .99). Conclusions MOUD was protective of all-cause mortality when NLP was used to identify PWID, but not significant when ICD codes were used to identify the analytic subjects.

Funder

National Institute on Drug Abuse

CHIPTS

UCLA

Center for AIDS Research

Publisher

Oxford University Press (OUP)

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