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Cracking the code(s): Optimization of encounter-level diagnosis coding to inform outpatient antimicrobial stewardship data modeling

Published online by Cambridge University Press:  18 January 2024

Ryan W. Stevens*
Affiliation:
Department of Pharmacy, Mayo Clinic, Rochester, Minnesota
James Manz
Affiliation:
Division of Spine and Neurosurgery, Mayo Clinic Health System, Eau Claire, Wisconsin
Margo Mathre
Affiliation:
Center for Digital Health, Data and Analytics, Healthcare Terminology, Mayo Clinic, Phoenix, Arizona
Natalie Bell
Affiliation:
Center for Digital Health, Data and Analytics, Healthcare Terminology, Mayo Clinic, Rochester, Minnesota
Abinash Virk
Affiliation:
Division of Public Health, Infectious Diseases, and Occupational Medicine, Mayo Clinic, Rochester, Minnesota
Paschalis Vergidis
Affiliation:
Division of Public Health, Infectious Diseases, and Occupational Medicine, Mayo Clinic, Rochester, Minnesota
Kelsey Jensen
Affiliation:
Department of Pharmacy, Mayo Clinic Health System, Austin, Minnesota
*
Corresponding author: Ryan W. Stevens; Email: stevens.ryan@mayo.edu
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Abstract

Type
Research Brief
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of The Society for Healthcare Epidemiology of America

In 2016, the Centers for Disease Control and Prevention (CDC) released Core Elements of outpatient antimicrobial stewardship program (ASP) which include leadership commitment, action for policy and practice, data tracking and reporting, and education. Reference Sanchez, Fleming-Dutra, Roberts and Hicks1 Compared to the inpatient setting, outpatient ASP involves a significantly higher number of encounters, dramatically shorter encounter durations, and little direct control over dispensing. Reference Jensen, Rivera and Draper2 Thus, accurate, specific, and actionable prescribing data are foundational to outpatient ASP activity because they inform provider education, development of clinical decision support (CDS) tools, and comparison reporting.

The ability to effectively assess prescribing trends in ambulatory encounters often hinges on the association of antimicrobial prescriptions with encounter-level diagnosis codes. Inaccuracies in diagnosis code selection can hinder or mislead programmatic assessment of antimicrobial prescribing trends, therefore inextricably linking the practices of diagnostic coding and ASP. Following identification of UTI as an outpatient ASP syndrome target, our health-system identified that most UTI encounters were being coded with the single International Classification of Disease Tenth Edition (ICD-10) code N39.0 (ie, urinary tract infect, site not specified). This code lacks sufficient syndrome-level specificity to facilitate assessments of prescribing appropriateness. Herein, we describe the outcomes of a CDS tool (ie, diagnosis calculator) developed to facilitate appropriate and specific diagnosis code selection during UTI encounters.

Methods

The ICD-10 codes related to UTI were stratified into 5 diagnostic groups: asymptomatic bacteriuria, cystitis, pyelonephritis, catheter-associated infections, and UTI not otherwise specified (NOS) within the data modeling platform (Slicer-Dicer, Epic, Verona, WI) (Supplementary Table 1 online). Another group was created for antimicrobial agents commonly utilized for UTI (Supplementary Table 2 online). A UTI diagnosis calculator (Supplementary Fig. 1 online) was constructed and implemented in the electronic health record (EHR, Epic). This calculator requires the user to select patient characteristics (eg, pregnancy and catheter status) and infection-related features (eg, lower- vs upper-tract disease, presence of hematuria, acute vs chronic vs recurrent), thereby facilitating selection of the most appropriate and the specific ICD-10 code. The calculator was implemented across the entire Mayo Clinic Enterprise on January 1, 2022, with stepwise introduction onto all applicable diagnosis code preference lists by March 2023. Education was provided to end users in the form of enterprise-wide newsletter communications, EHR super-user training, and primary-care departmental presentations. Additionally, changes to EHR diagnosis records were implemented that sent users directly to the calculator when “UTI, NOS” selection was attempted as a visit diagnosis.

This before-and-after quasi-experimental study included a preimplementation period from July 1, 2021, through December 31, 2021 (6 months) and a postimplementation period from March 1, 2023, through August 31, 2023 (6 months). Enterprise-wide encounters for patients aged ≥18 years were included if (1) an ICD-10 code from any of the UTI diagnosis groups was utilized, (2) an antibiotic from the antimicrobial group was prescribed during the encounter, and (3) the patient was seen by primary care, urgent care, emergency department, or obstetrics/gynecology. The outcome of interest was the percentage of total encounters coded into each UTI diagnosis group. We used the χ2 test to assess differences in encounter volumes by diagnosis.

Results

Encounter-level diagnosis coding was evaluated across a total of 29,558 encounters during the 2 study periods, with 14,858 encounters in the preimplementation period and 14,700 encounters in the postimplementation period. A statistically significant reduction in the use of ICD-10 code N39.0 occurred following implementation of the calculator (65% vs 23.6%; P < .001). This change was accompanied by increases in the percentage of encounters comprised of primary ICD-10 codes from other, more syndrome-specific, UTI diagnostic groups (Table 1). The largest increase in code utilization occurred in the cystitis group, in which this group accounted for 30.7% of all encounters in the preimplementation period compared to 70.4% in the postimplementation period (P < .001).

Table 1. Encounter volumes (%) by study period

Note. UTI, urinary tract infection.

Discussion

Outpatient ASP metrics are often “encounter based” (eg, encounter-level prescribing rates), and encounter-level diagnosis codes are commonly leveraged to associate antimicrobial prescribing with specific infectious syndromes. Reference Cubillos, Patch and Chandler3,Reference Stenehjem, Wallin and Fleming-Dutra4 A tiered diagnostic approach has commonly been applied wherein encounter ICD-10 codes are stratified into syndromes for which antibiotics are always, sometimes, or never appropriate (eg, tier I, II, and III, respectively). Reference King, Tsay, Hicks, Bizune, Hersh and Fleming-Dutra5,Reference Fleming-Dutra, Hersh and Shapiro6 This approach has allowed institutions to stratify encounters by syndrome(s) within data models; however, reliance on diagnoses coding also introduces inaccuracies when code selection is incorrect or lacks specificity.

Accurate diagnosis code selection has important implications for ASP data modeling in UTIs. Apart from asymptomatic bacteriuria (ASB), other UTIs (ie, complicated cystitis, uncomplicated cystitis, catheter associated cystitis, and pyelonephritis) would all be categorized as tier I in the aforementioned structure. However, optimal drug selection, dosing, and durations of therapy vary widely across diagnoses. Reference Goebel, Trautner and Grigoryan7 Therefore, if diagnosis codes are used to describe trends and/or identify opportunities in prescribing optimization, then coding specificity is paramount to data modeling and subsequent intervention development. Others attempting to steward antimicrobials in ambulatory UTI encounters have also attempted improvements in diagnostic specificity through CDS tools and found improvements in coding specificity. Reference Eudaley, Mihm, Higdon, Jeter and Chamberlin8

We evaluated outpatient UTI-related ICD-10 code utilization before and after implementation of a diagnosis CDS (ie, diagnosis calculator). Diagnostic calculator implementation resulted in significant improvement in coding specificity. Our study was limited by the exclusion of some infrequently utilized antimicrobials from the antimicrobial group and by lack of chart review in each individual case to confirm appropriate code selection from the calculator. Nevertheless, these findings add to the existing body of evidence suggesting that CDS as an effective means for improving diagnostic specificity that can facilitate ASP efforts toward accurate data modeling and prescribing assessments.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/ice.2023.296

Acknowledgments

The authors thank Sue Christensen and Evan Draper for the contribution to this work through the design and implementation of Tableau and Slicer-Dicer data models facilitating the monitoring of code utilization. We also thank the Mayo Clinic Outpatient Antimicrobial Stewardship Team for their signification contributions to the local implementation and education of the CDS tool.

Financial support

No financial support was provided relevant to this article.

Competing interests

All authors report no conflicts of interest relevant to this article.

References

Sanchez, GV, Fleming-Dutra, KE, Roberts, RM, Hicks, LA. Core elements of outpatient antibiotic stewardship. MMWR Recomm Rep 2016;65(6):112.10.15585/mmwr.rr6506a1CrossRefGoogle ScholarPubMed
Jensen, KL, Rivera, CG, Draper, EW, et al. From concept to reality: building an ambulatory antimicrobial stewardship program. J Am Coll Clin Pharm 2021;4:15831593.CrossRefGoogle Scholar
Cubillos, AL, Patch, ME, Chandler, EL, et al. Antimicrobial stewardship intervention bundle decreases outpatient fluoroquinolone prescribing for urinary tract infections. Infect Control Hosp Epidemiol 2023;44:488490.10.1017/ice.2021.520CrossRefGoogle ScholarPubMed
Stenehjem, E, Wallin, A, Fleming-Dutra, KE, et al. Antibiotic prescribing variability in a large urgent care network: a new target for outpatient stewardship. Clin Inf Dis 2020;70:17811787.10.1093/cid/ciz910CrossRefGoogle Scholar
King, LM, Tsay, SV, Hicks, LA, Bizune, D, Hersh, AL, Fleming-Dutra, K. Changes in outpatient antibiotic prescribing for acute respiratory illnesses, 2011 to 2018. Antimicrobial Steward Healthc Epidemiol 2021;1:e66.10.1017/ash.2021.230CrossRefGoogle ScholarPubMed
Fleming-Dutra, KE, Hersh, AL, Shapiro, DJ, et al. Prevalence of inappropriate antibiotic prescriptions among US ambulatory care visits, 2010–2011. JAMA 2016;315:18641873.10.1001/jama.2016.4151CrossRefGoogle ScholarPubMed
Goebel, MC, Trautner, BW, Grigoryan, L. The five Ds of outpatient antibiotic stewardship for urinary tract infections. Clin Microbiol Rev 2021;34:e0000320.10.1128/CMR.00003-20CrossRefGoogle ScholarPubMed
Eudaley, ST, Mihm, AE, Higdon, R, Jeter, J, Chamberlin, SM. Development and implementation of a clinical decision support tool for treatment of uncomplicated urinary tract infections in a family medicine resident clinic. J Am Pharm Assoc 2019;59:579585.10.1016/j.japh.2019.03.006CrossRefGoogle Scholar
Figure 0

Table 1. Encounter volumes (%) by study period

Supplementary material: File

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Figure S1

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Table S1

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Table S2

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