Cargando…

Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time

Wastewater monitoring has provided health officials with early warnings for new COVID-19 outbreaks, but to date, no approach has been validated to distinguish signal (sustained surges) from noise (background variability) in wastewater data to alert officials to the need for heightened public health...

Descripción completa

Detalles Bibliográficos
Autores principales: Keshaviah, Aparna, Huff, Ian, Hu, Xindi C., Guidry, Virginia, Christensen, Ariel, Berkowitz, Steven, Reckling, Stacie, Noble, Rachel T., Clerkin, Thomas, Blackwood, Denene, McLellan, Sandra L., Roguet, Adélaïde, Musse, Isabel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10401018/
https://www.ncbi.nlm.nih.gov/pubmed/37490532
http://dx.doi.org/10.1073/pnas.2216021120
_version_ 1785084562663014400
author Keshaviah, Aparna
Huff, Ian
Hu, Xindi C.
Guidry, Virginia
Christensen, Ariel
Berkowitz, Steven
Reckling, Stacie
Noble, Rachel T.
Clerkin, Thomas
Blackwood, Denene
McLellan, Sandra L.
Roguet, Adélaïde
Musse, Isabel
author_facet Keshaviah, Aparna
Huff, Ian
Hu, Xindi C.
Guidry, Virginia
Christensen, Ariel
Berkowitz, Steven
Reckling, Stacie
Noble, Rachel T.
Clerkin, Thomas
Blackwood, Denene
McLellan, Sandra L.
Roguet, Adélaïde
Musse, Isabel
author_sort Keshaviah, Aparna
collection PubMed
description Wastewater monitoring has provided health officials with early warnings for new COVID-19 outbreaks, but to date, no approach has been validated to distinguish signal (sustained surges) from noise (background variability) in wastewater data to alert officials to the need for heightened public health response. We analyzed 62 wk of data from 19 sites participating in the North Carolina Wastewater Monitoring Network to characterize wastewater metrics around the Delta and Omicron surges. We found that wastewater data identified outbreaks 4 to 5 d before case data (reported on the earlier of the symptom start date or test collection date), on average. At most sites, correlations between wastewater and case data were similar regardless of how wastewater concentrations were normalized and whether calculated with county-level or sewershed-level cases, suggesting that officials may not need to geospatially align case data with sewershed boundaries to gain insights into disease transmission. Although wastewater trend lines captured clear differences in the Delta versus Omicron surge trajectories, no single wastewater metric (detectability, percent change, or flow-population normalized viral concentrations) reliably signaled when these surges started. After iteratively examining different combinations of these three metrics, we developed the Covid-SURGE (Signaling Unprecedented Rises in Groupwide Exposure) algorithm, which identifies unprecedented signals in the wastewater data. With a true positive rate of 82%, a false positive rate of 7%, and strong performance during both surges and in small and large sites, our algorithm provides public health officials with an automated way to flag community-level COVID-19 surges in real time.
format Online
Article
Text
id pubmed-10401018
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher National Academy of Sciences
record_format MEDLINE/PubMed
spelling pubmed-104010182023-08-05 Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time Keshaviah, Aparna Huff, Ian Hu, Xindi C. Guidry, Virginia Christensen, Ariel Berkowitz, Steven Reckling, Stacie Noble, Rachel T. Clerkin, Thomas Blackwood, Denene McLellan, Sandra L. Roguet, Adélaïde Musse, Isabel Proc Natl Acad Sci U S A Biological Sciences Wastewater monitoring has provided health officials with early warnings for new COVID-19 outbreaks, but to date, no approach has been validated to distinguish signal (sustained surges) from noise (background variability) in wastewater data to alert officials to the need for heightened public health response. We analyzed 62 wk of data from 19 sites participating in the North Carolina Wastewater Monitoring Network to characterize wastewater metrics around the Delta and Omicron surges. We found that wastewater data identified outbreaks 4 to 5 d before case data (reported on the earlier of the symptom start date or test collection date), on average. At most sites, correlations between wastewater and case data were similar regardless of how wastewater concentrations were normalized and whether calculated with county-level or sewershed-level cases, suggesting that officials may not need to geospatially align case data with sewershed boundaries to gain insights into disease transmission. Although wastewater trend lines captured clear differences in the Delta versus Omicron surge trajectories, no single wastewater metric (detectability, percent change, or flow-population normalized viral concentrations) reliably signaled when these surges started. After iteratively examining different combinations of these three metrics, we developed the Covid-SURGE (Signaling Unprecedented Rises in Groupwide Exposure) algorithm, which identifies unprecedented signals in the wastewater data. With a true positive rate of 82%, a false positive rate of 7%, and strong performance during both surges and in small and large sites, our algorithm provides public health officials with an automated way to flag community-level COVID-19 surges in real time. National Academy of Sciences 2023-07-25 2023-08-01 /pmc/articles/PMC10401018/ /pubmed/37490532 http://dx.doi.org/10.1073/pnas.2216021120 Text en Copyright © 2023 the Author(s). Published by PNAS. https://creativecommons.org/licenses/by-nc-nd/4.0/This open access article is distributed under Creative Commons Attribution-NonCommercial-NoDerivatives License 4.0 (CC BY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Biological Sciences
Keshaviah, Aparna
Huff, Ian
Hu, Xindi C.
Guidry, Virginia
Christensen, Ariel
Berkowitz, Steven
Reckling, Stacie
Noble, Rachel T.
Clerkin, Thomas
Blackwood, Denene
McLellan, Sandra L.
Roguet, Adélaïde
Musse, Isabel
Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title_full Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title_fullStr Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title_full_unstemmed Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title_short Separating signal from noise in wastewater data: An algorithm to identify community-level COVID-19 surges in real time
title_sort separating signal from noise in wastewater data: an algorithm to identify community-level covid-19 surges in real time
topic Biological Sciences
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10401018/
https://www.ncbi.nlm.nih.gov/pubmed/37490532
http://dx.doi.org/10.1073/pnas.2216021120
work_keys_str_mv AT keshaviahaparna separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT huffian separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT huxindic separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT guidryvirginia separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT christensenariel separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT berkowitzsteven separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT recklingstacie separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT noblerachelt separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT clerkinthomas separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT blackwooddenene separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT mclellansandral separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT roguetadelaide separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime
AT musseisabel separatingsignalfromnoiseinwastewaterdataanalgorithmtoidentifycommunitylevelcovid19surgesinrealtime