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Scaling of SARS-CoV-2 RNA in Settled Solids from Multiple Wastewater Treatment Plants to Compare Incidence Rates of Laboratory-Confirmed COVID-19 in Their Sewersheds

Authors :
Mhara M. Coffman
Duc J. Vugia
Nasa Sinnott-Armstrong
Alexandria B. Boehm
Samuel Dorevich
Winnie Zambrana
Lorelay M. Mendoza Grijalva
Katherine E. Graham
Laura Roldan-Hernandez
David Catoe
Marlene K. Wolfe
Andrea I. Silverman
Sooyeol Kim
Alexander T. Yu
Anand Archana
Krista R. Wigginton
Source :
Environmental Science & Technology Letters
Publication Year :
2021
Publisher :
American Chemical Society, 2021.

Abstract

Published and unpublished reports show that SARS-CoV-2 RNA in publicly owned treatment work (POTW) wastewater influent and solids is associated with new COVID-19 cases or incidence in associated sewersheds, but methods for comparing data collected from diverse POTWs to infer information about the relative incidence of laboratory-confirmed COVID-19 cases, and scaling to allow such comparisons, have not been previously established Here, we show that SARS-CoV-2 N1 and N2 concentrations in solids normalized by concentrations of PMMoV RNA in solids can be used to compare incidence of laboratory confirmed new COVID-19 cases across POTWs Using data collected at seven POTWs along the United States West Coast, Midwest, and East Coast serving ∼3% of the U S population (9 million people), we show that a 1 log change in N gene/PMMoV is associated with a 0 24 (range 0 19 to 0 29) log10 change in incidence of laboratory confirmed COVID-19 Scaling of N1 and N2 by PMMoV is consistent, conceptually, with a mass balance model relating SARS-CoV-2 RNA to the number of infected individuals shedding virus in their stool This information should support the application of wastewater-based epidemiology to inform the response to the COVID-19 pandemic and potentially future viral pandemics ©

Details

Language :
English
ISSN :
23288930
Database :
OpenAIRE
Journal :
Environmental Science & Technology Letters
Accession number :
edsair.doi.dedup.....1ff4b10ac4416460fcfb86badf0b25c1