Sentinel surveillance contributes to tracking lyme disease spatiotemporal risk trends in southern Quebec, Canada

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DOI

https://doi.org/10.3390/pathogens11050531

Language of the publication
English
Date
2022-05-02
Type
Article
Author(s)
  • Guillot, Camille
  • Bouchard, Catherine
  • Buhler, Kayla
  • Dumas, Ariane
  • Milord, François
  • Ripoche, Marion
  • Pelletier, Roxane
  • Leighton, Patrick A.
Publisher
MDPI

Abstract

Lyme disease (LD) is a tick-borne disease which has been emerging in temperate areas in North America, Europe, and Asia. In Quebec, Canada, the number of human LD cases is increasing rapidly and thus surveillance of LD risk is a public health priority. In this study, we aimed to evaluate the ability of active sentinel surveillance to track spatiotemporal trends in LD risk. Using drag flannel data from 2015–2019, we calculated density of nymphal ticks (DON), an index of enzootic hazard, across the study region (southern Quebec). A Poisson regression model was used to explore the association between the enzootic hazard and LD risk (annual number of human cases) at the municipal level. Predictions from models were able to track both spatial and interannual variation in risk. Furthermore, a risk map produced by using model predictions closely matched the official risk map published by provincial public health authorities, which requires the use of complex criteria-based risk assessment. Our study shows that active sentinel surveillance in Quebec provides a sustainable system to follow spatiotemporal trends in LD risk. Such a network can support public health authorities in informing the public about LD risk within their region or municipality and this method could be extended to support Lyme disease risk assessment at the national level in Canada.

Plain language summary

In Quebec, Canada, the number of human LD cases is increasing rapidly and thus surveillance of LD risk is a public health priority. In this study, we aimed to evaluate the ability of active sentinel surveillance to track spatiotemporal trends in LD risk. Using drag flannel data from 2015–2019, we calculated density of nymphal ticks (DON), an index of enzootic hazard, across the study region (southern Quebec). A Poisson regression model was used to explore the association between the enzootic hazard and LD risk (annual number of human cases) at the municipal level. Predictions from models were able to track both spatial and interannual variation in risk. Furthermore, a risk map produced by using model predictions closely matched the official risk map published by provincial public health authorities, which requires the use of complex criteria-based risk assessment. Our study shows that active sentinel surveillance in Quebec provides a sustainable system to follow spatiotemporal trends in LD risk. Such a network can support public health authorities in informing the public about LD risk within their region or municipality and this method could be extended to support Lyme disease risk assessment at the national level in Canada.

Subject

  • Health

Keywords

  • sentinel surveillance,
  • Lyme disease,
  • tick-borne diseases

Rights

Pagination

1-14

Peer review

Yes

Open access level

Gold

Identifiers

PubMed ID
35631052
ISSN
2076-0817

Article

Journal title
Pathogens
Journal volume
11
Journal issue
5
Article number
531

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Collection(s)

Public health surveillance

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