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Impact of Seasonality and Influenza Rates on Interventions to Reduce Hospital-Acquired Clostridioides difficile Rates

Published online by Cambridge University Press:  02 November 2020

Jenine Leal
Affiliation:
Alberta Health Services/University of Calgary
Peter Faris
Affiliation:
University of Calgary
Ye Shen
Affiliation:
Infection Prevention & Control, Alberta Health Services
Lauren Bresee
Affiliation:
University of Calgary
Kathryn Bush
Affiliation:
Infection Prevention & Control, Alberta Health Services
Blanda Chow
Affiliation:
Infection Prevention & Control, Alberta Health Services
Bruce Dalton
Affiliation:
London Health Sciences Centre
Jared Fletcher
Affiliation:
Mount Royal University
Sara Hartman
Affiliation:
University of Calgary
Jaime Kaufman
Affiliation:
University of Calgary
Joseph Kim
Affiliation:
Department of Medicine, University of Calgary
Maitreyi Kothandaraman
Affiliation:
Alberta Health Services
Scott Kraft
Affiliation:
Alberta Health Services
Nicole Lamont
Affiliation:
University of Calgary
Oscar Larios
Affiliation:
South Health Campus
Braden Manns
Affiliation:
Alberta Health Services
Bayan Missaghi
Affiliation:
Alberta Health Services
Wrechelle Ocampo
Affiliation:
University of Calgary
Paule Poulin
Affiliation:
Alberta Health Services
Deana Sabuda
Affiliation:
Alberta Health Services
Jayna Holroyd-Leduc
Affiliation:
Alberta Health Services
Thomas Louie
Affiliation:
Alberta Health Services
John Conly
Affiliation:
Foothills Medical Centre
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Abstract

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Background: Hospital-acquired Clostridioides difficile infection (HA-CDI) rates are highly variable over time, posing problems for research assessing interventions that might improve rates. By understanding seasonality in HA-CDI rates and the impacts that other factors such as influenza admissions might have on these rates, we can account for them when establishing the relationship between interventions and infection rates. We assessed whether there were seasonal trends in HA-CDI and whether they could be accounted for by influenza rates. Methods: We assessed HA-CDI rates per 10,000 patient days, and the rate of hospitalized patients with influenza per 1,000 admissions in 4 acute-care facilities (n = 2,490 beds) in Calgary, Alberta, from January 2016 to December 2018. We used 4 statistical approaches in R (version 3.5.1 software): (1) autoregressive integrated moving average (ARIMA) to assess dependencies and trends in each of the monthly HA-CDI and influenza series; (2) cross correlation to assess dependencies between the HA-CDI and influenza series lagged over time; (3) Poisson harmonic regression models (with sine and cosine components) to assess the seasonality of the rates; and (4) Poisson regression to determine whether influenza rates accounted for seasonality in the HA-CDI rates. Results: Conventional ARIMA approaches did not detect seasonality in the HA-CDI rates, but we found strong seasonality in the influenza rates. A cross-correlation analysis revealed evidence of correlation between the series at a lag of zero (R = 0.41; 95% CI, 0.10–0.65) and provided an indication of a seasonal relationship between the series (Fig. 1). Poisson regression suggested that influenza rates predicted CDI rates (P < .01). Using harmonic regression, there was evidence of seasonality in HA-CDI rates (2 [2 df] = 6.62; P < .05) and influenza rates (2 [2 df] = 1,796.6; P < .001). In a Poisson model of HA-CDI rates with both the harmonic components and influenza admission rates, the harmonic components were no longer predictive of HA-CDI rates. Conclusions: Harmonic regression provided a sensitive means of identifying seasonality in HA-CDI rates, but the seasonality effect was accounted for by influenza admission rates. The relationship between HA-CDI and influenza rates is likely mediated by antibiotic prescriptions, which needs to be assessed. To improve precision and reduce bias, research on interventions to reduce HA-CDI rates should assess historic seasonality in HA-CDI rates and should account for influenza admissions.

Funding: None

Disclosures: None

Type
Poster Presentations
Copyright
© 2020 by The Society for Healthcare Epidemiology of America. All rights reserved.