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Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus

Wastewater-based surveillance has gained prominence and come to the forefront as a leading indicator of forecasting COVID-19 (coronavirus disease 2019) infection dynamics owing to its cost-effectiveness and its ability to inform early public health interventions. A university campus could especially...

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Autores principales: Karthikeyan, Smruthi, Nguyen, Andrew, McDonald, Daniel, Zong, Yijian, Ronquillo, Nancy, Ren, Junting, Zou, Jingjing, Farmer, Sawyer, Humphrey, Greg, Henderson, Diana, Javidi, Tara, Messer, Karen, Anderson, Cheryl, Schooley, Robert, Martin, Natasha K., Knight, Rob
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8409724/
https://www.ncbi.nlm.nih.gov/pubmed/34374562
http://dx.doi.org/10.1128/mSystems.00793-21
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author Karthikeyan, Smruthi
Nguyen, Andrew
McDonald, Daniel
Zong, Yijian
Ronquillo, Nancy
Ren, Junting
Zou, Jingjing
Farmer, Sawyer
Humphrey, Greg
Henderson, Diana
Javidi, Tara
Messer, Karen
Anderson, Cheryl
Schooley, Robert
Martin, Natasha K.
Knight, Rob
author_facet Karthikeyan, Smruthi
Nguyen, Andrew
McDonald, Daniel
Zong, Yijian
Ronquillo, Nancy
Ren, Junting
Zou, Jingjing
Farmer, Sawyer
Humphrey, Greg
Henderson, Diana
Javidi, Tara
Messer, Karen
Anderson, Cheryl
Schooley, Robert
Martin, Natasha K.
Knight, Rob
author_sort Karthikeyan, Smruthi
collection PubMed
description Wastewater-based surveillance has gained prominence and come to the forefront as a leading indicator of forecasting COVID-19 (coronavirus disease 2019) infection dynamics owing to its cost-effectiveness and its ability to inform early public health interventions. A university campus could especially benefit from wastewater surveillance, as universities are characterized by largely asymptomatic populations and are potential hot spots for transmission that necessitate frequent diagnostic testing. In this study, we employed a large-scale GIS (geographic information systems)-enabled building-level wastewater monitoring system associated with the on-campus residences of 7,614 individuals. Sixty-eight automated wastewater samplers were deployed to monitor 239 campus buildings with a focus on residential buildings. Time-weighted composite samples were collected on a daily basis and analyzed on the same day. Sample processing was streamlined significantly through automation, reducing the turnaround time by 20-fold and exceeding the scale of similar surveillance programs by 10- to 100-fold, thereby overcoming one of the biggest bottlenecks in wastewater surveillance. An automated wastewater notification system was developed to alert residents to a positive wastewater sample associated with their residence and to encourage uptake of campus-provided asymptomatic testing at no charge. This system, integrated with the rest of the “Return to Learn” program at the University of California (UC) San Diego-led to the early diagnosis of nearly 85% of all COVID-19 cases on campus. COVID-19 testing rates increased by 1.9 to 13× following wastewater notifications. Our study shows the potential for a robust, efficient wastewater surveillance system to greatly reduce infection risk as college campuses and other high-risk environments reopen. IMPORTANCE Wastewater-based epidemiology can be particularly valuable at university campuses where high-resolution spatial sampling in a well-controlled context could not only provide insight into what affects campus community as well as how those inferences can be extended to a broader city/county context. In the present study, a large-scale wastewater surveillance was successfully implemented on a large university campus enabling early detection of 85% of COVID-19 cases thereby averting potential outbreaks. The highly automated sample processing to reporting system enabled dramatic reduction in the turnaround time to 5 h (sample to result time) for 96 samples. Furthermore, miniaturization of the sample processing pipeline brought down the processing cost significantly ($13/sample). Taken together, these results show that such a system could greatly ameliorate long-term surveillance on such communities as they look to reopen. Author Video: An author video summary of this article is available.
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spelling pubmed-84097242021-09-09 Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus Karthikeyan, Smruthi Nguyen, Andrew McDonald, Daniel Zong, Yijian Ronquillo, Nancy Ren, Junting Zou, Jingjing Farmer, Sawyer Humphrey, Greg Henderson, Diana Javidi, Tara Messer, Karen Anderson, Cheryl Schooley, Robert Martin, Natasha K. Knight, Rob mSystems Research Article Wastewater-based surveillance has gained prominence and come to the forefront as a leading indicator of forecasting COVID-19 (coronavirus disease 2019) infection dynamics owing to its cost-effectiveness and its ability to inform early public health interventions. A university campus could especially benefit from wastewater surveillance, as universities are characterized by largely asymptomatic populations and are potential hot spots for transmission that necessitate frequent diagnostic testing. In this study, we employed a large-scale GIS (geographic information systems)-enabled building-level wastewater monitoring system associated with the on-campus residences of 7,614 individuals. Sixty-eight automated wastewater samplers were deployed to monitor 239 campus buildings with a focus on residential buildings. Time-weighted composite samples were collected on a daily basis and analyzed on the same day. Sample processing was streamlined significantly through automation, reducing the turnaround time by 20-fold and exceeding the scale of similar surveillance programs by 10- to 100-fold, thereby overcoming one of the biggest bottlenecks in wastewater surveillance. An automated wastewater notification system was developed to alert residents to a positive wastewater sample associated with their residence and to encourage uptake of campus-provided asymptomatic testing at no charge. This system, integrated with the rest of the “Return to Learn” program at the University of California (UC) San Diego-led to the early diagnosis of nearly 85% of all COVID-19 cases on campus. COVID-19 testing rates increased by 1.9 to 13× following wastewater notifications. Our study shows the potential for a robust, efficient wastewater surveillance system to greatly reduce infection risk as college campuses and other high-risk environments reopen. IMPORTANCE Wastewater-based epidemiology can be particularly valuable at university campuses where high-resolution spatial sampling in a well-controlled context could not only provide insight into what affects campus community as well as how those inferences can be extended to a broader city/county context. In the present study, a large-scale wastewater surveillance was successfully implemented on a large university campus enabling early detection of 85% of COVID-19 cases thereby averting potential outbreaks. The highly automated sample processing to reporting system enabled dramatic reduction in the turnaround time to 5 h (sample to result time) for 96 samples. Furthermore, miniaturization of the sample processing pipeline brought down the processing cost significantly ($13/sample). Taken together, these results show that such a system could greatly ameliorate long-term surveillance on such communities as they look to reopen. Author Video: An author video summary of this article is available. American Society for Microbiology 2021-08-10 /pmc/articles/PMC8409724/ /pubmed/34374562 http://dx.doi.org/10.1128/mSystems.00793-21 Text en Copyright © 2021 Karthikeyan et al. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Karthikeyan, Smruthi
Nguyen, Andrew
McDonald, Daniel
Zong, Yijian
Ronquillo, Nancy
Ren, Junting
Zou, Jingjing
Farmer, Sawyer
Humphrey, Greg
Henderson, Diana
Javidi, Tara
Messer, Karen
Anderson, Cheryl
Schooley, Robert
Martin, Natasha K.
Knight, Rob
Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title_full Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title_fullStr Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title_full_unstemmed Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title_short Rapid, Large-Scale Wastewater Surveillance and Automated Reporting System Enable Early Detection of Nearly 85% of COVID-19 Cases on a University Campus
title_sort rapid, large-scale wastewater surveillance and automated reporting system enable early detection of nearly 85% of covid-19 cases on a university campus
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8409724/
https://www.ncbi.nlm.nih.gov/pubmed/34374562
http://dx.doi.org/10.1128/mSystems.00793-21
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