Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) seroprevalence: navigating the absence of a gold standard
- DOI
- Language of the publication
- English
- Date
- 2021-09-23
- Type
- Article
- Author(s)
- Saeed, Sahar
- O’Brien, Sheila F.
- Abe, Kento
- Yi, Qi-Long
- Rathod, Bhavisha
- Wang, Jenny
- Fazel-Zarandi, Mahya
- Tuite, Ashleigh
- Fisman, David
- Wood, Heidi
- Colwill, Karen
- Gingras, Anne-Claude
- Drews, Steven J.
- Publisher
- PLoS ONE
Abstract
BACKGROUND: Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) seroprevalence studies bridge the gap left from case detection, to estimate the true burden of the COVID-19 pandemic. While multiple anti-SARS-CoV-2 immunoassays are available, no gold standard exists. METHODS: This serial cross-sectional study was conducted using plasma samples from 8999 healthy blood donors between April-September 2020. Each sample was tested by four assays: Abbott SARS-Cov-2 IgG assay, targeting nucleocapsid (Abbott-NP) and three in-house IgG ELISA assays (targeting spike glycoprotein, receptor binding domain, and nucleocapsid). Seroprevalence rates were compared using multiple composite reference standards and by a series of Bayesian Latent Class Models. RESULT: We found 13 unique diagnostic phenotypes; only 32 samples (0.4%) were positive by all assays. None of the individual assays resulted in seroprevalence increasing monotonically over time. In contrast, by using the results from all assays, the Bayesian Latent Class Model with informative priors predicted seroprevalence increased from 0.7% (95% credible interval (95% CrI); 0.4, 1.0%) in April/May to 0.7% (95% CrI 0.5, 1.1%) in June/July to 0.9% (95% CrI 0.5, 1.3) in August/September. Assay characteristics varied over time. Overall Spike had the highest sensitivity (93.5% (95% CrI 88.7, 97.3%), while the sensitivity of the Abbott-NP assay waned from 77.3% (95% CrI 58.7, 92.5%) in April/May to 64.4% (95% CrI 45.6, 83.0) by August/September. DISCUSSION: Our results confirmed very low seroprevalence after the first wave in Canada. Given the dynamic nature of this pandemic, Bayesian Latent Class Models can be used to correct for imperfect test characteristics and waning IgG antibody signals.
Subject
- Health
Keywords
- SARS CoV 2,
- Nucleocapsids,
- Glycoproteins,
- Virus testing,
- Enzyme-linked immunoassays,
- Antibodies,
- COVID 19,
- Blood donors
Rights
Pagination
1-13
Peer review
Yes
Open access level
Gold
Identifiers
- PubMed ID
- 34555095
- ISSN
- 1932-6203
Article
- Journal title
- PLoS ONE
- Journal volume
- 16
- Journal issue
- 9
- Article number
- e0257743