Estimating the Under-ascertainment of COVID-19 cases in Toronto, Ontario, March to May 2020

Author:

Desta Binyam N1ORCID,Ota Sylvia2,Gournis Effie2,Pires Sara M3,Greer Amy L4,Dodd Warren1ORCID,Majowicz Shannon E1

Affiliation:

1. School of Public Health Sciences, University of Waterloo, Waterloo, ON, Canada

2. Toronto Public Health, Toronto, ON, Canada

3. Risk-Benefit Research Group, Technical University of Denmark, Lyngby, Denmark

4. Department of Population Medicine, University of Guelph, Guelph, ON, Canada

Abstract

Background: Public health surveillance data do not always capture all cases, due in part to test availability and health care seeking behaviour. Our study aimed to estimate under-ascertainment multipliers for each step in the reporting chain for COVID-19 in Toronto, Canada. Design and methods: We applied stochastic modeling to estimate these proportions for the period from March 2020 (the beginning of the pandemic) through to May 23, 2020, and for three distinct windows with different laboratory testing criteria within this period. Results: For each laboratory-confirmed symptomatic case reported to Toronto Public Health during the entire period, the estimated number of COVID-19 infections in the community was 18 (5th and 95th percentile: 12, 29). The factor most associated with under-reporting was the proportion of those who sought care that received a test. Conclusions: Public health officials should use improved estimates to better understand the burden of COVID-19 and other similar infections.

Publisher

SAGE Publications

Reference40 articles.

1. Diagnosis and Management of First Case of COVID-19 in Canada: Lessons Applied From SARS-CoV-1

2. Government of Canada. Coronavirus disease (COVID-19): Outbreak update - Canada.ca, https://www.canada.ca/en/public-health/services/diseases/2019-novel-coronavirus-infection.html#a1 (2021, accessed 28 April 2021).

3. The City of Toronto. COVID-19: Status of Cases in Toronto – City of Toronto, https://www.toronto.ca/home/covid-19/covid-19-latest-city-of-toronto-news/covid-19-status-of-cases-in-toronto/ (2021, accessed 28 April 2021).

4. Defining the Epidemiology of Covid-19 — Studies Needed

5. A Systematic Review of COVID-19 Epidemiology Based on Current Evidence

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