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Wastewater-based surveillance (WBS) Interest1 #708744
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+Citations (4) - CitationsAdd new citationList by: CiterankMapLink[1] A wastewater-based epidemic model for SARS-CoV-2 with application to three Canadian cities
Author: Shokoofeh Nourbakhsh, Aamir Fazil, Michael Li, Chand S. Mangat, Shelley W. Peterson, Jade Daigle, Stacie Langner, Jayson Shurgold, Patrick D’Aoust, Robert Delatolla, Elizabeth Mercier, Xiaoli Pang, Bonita E. Lee, Rebecca Stuart, Shinthuja Wijayasri, David Champredon Publication date: 21 April 2022 Publication info: Epidemics, Volume 39, June 2022, 100560, ISSN 1755-4365, Cited by: David Price 11:06 PM 29 November 2023 GMT Citerank: (5) 685445Michael WZ LiMichael Li is Senior Scientist in the Public Health Risk Science Division (PHRS) of the Public Health Agency of Canada (PHAC) and a Research Associate at the South African Centre for Epidemiological Modelling and Analysis (SACEMA).10019D3ABAB, 701037MfPH – Publications144B5ACA0, 704022Surveillance859FDEF6, 704045Covid-19859FDEF6, 715283David ChampredonDr. David Champredon is a senior scientist at the Public Health Agency of Canada. His work focuses on modelling the spread of infectious diseases at the population level, especially respiratory and sexually transmitted infections. During the past two years, he supported the modelling efforts to respond to the COVID-19 pandemic, particularly wastewater-based modelling.10019D3ABAB URL: DOI: https://doi.org/10.1016/j.epidem.2022.100560
| Excerpt / Summary [Epidemics, 21 April 2022]
The COVID-19 pandemic has stimulated wastewater-based surveillance, allowing public health to track the epidemic by monitoring the concentration of the genetic fingerprints of SARS-CoV-2 shed in wastewater by infected individuals. Wastewater-based surveillance for COVID-19 is still in its infancy. In particular, the quantitative link between clinical cases observed through traditional surveillance and the signals from viral concentrations in wastewater is still developing and hampers interpretation of the data and actionable public-health decisions. We present a modelling framework that includes both SARS-CoV-2 transmission at the population level and the fate of SARS-CoV-2 RNA particles in the sewage system after faecal shedding by infected persons in the population. Using our mechanistic representation of the combined clinical/wastewater system, we perform exploratory simulations to quantify the effect of surveillance effectiveness, public-health interventions and vaccination on the discordance between clinical and wastewater signals. We also apply our model to surveillance data from three Canadian cities to provide wastewater-informed estimates for the actual prevalence, the effective reproduction number and incidence forecasts. We find that wastewater-based surveillance, paired with this model, can complement clinical surveillance by supporting the estimation of key epidemiological metrics and hence better triangulate the state of an epidemic using this alternative data source. |
Link[2] An exploration of the relationship between wastewater viral signals and COVID-19 hospitalizations in Ottawa, Canada
Author: K. Ken Peng, Elizabeth M. Renouf, Charmaine B. Dean, X. Joan Hu, Robert Delatolla, Douglas G. Manuel Publication date: 7 June 2023 Publication info: Infectious Disease Modelling, Volume 8, Issue 3, 2023, Pages 617-631, ISSN 2468-0427, Cited by: David Price 11:55 PM 29 November 2023 GMT Citerank: (5) 679764Charmaine DeanCharmaine Dean is Vice-President, Research and Professor in the Department of Statistics and Actuarial Science at the University of Waterloo.10019D3ABAB, 685230Doug ManuelDr. Manuel is a Medical Doctor with a Masters in Epidemiology and Royal College specialization in Public Health and Preventive Medicine. He is a Senior Scientist in the Clinical Epidemiology Program at Ottawa Hospital Research Institute, and a Professor in the Departments of Family Medicine and Epidemiology and Community Medicine.10019D3ABAB, 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 704022Surveillance859FDEF6, 704045Covid-19859FDEF6 URL: DOI: https://doi.org/10.1016/j.idm.2023.05.011
| Excerpt / Summary [Infectious Disease Modelling, 7 June 2023]
Monitoring of viral signal in wastewater is considered a useful tool for monitoring the burden of COVID-19, especially during times of limited availability in testing. Studies have shown that COVID-19 hospitalizations are highly correlated with wastewater viral signals and the increases in wastewater viral signals can provide an early warning for increasing hospital admissions. The association is likely nonlinear and time-varying. This project employs a distributed lag nonlinear model (DLNM) (Gasparrini et al., 2010) to study the nonlinear exposure-response delayed association of the COVID-19 hospitalizations and SARS-CoV-2 wastewater viral signals using relevant data from Ottawa, Canada. We consider up to a 15-day time lag from the average of SARS-CoV N1 and N2 gene concentrations to COVID-19 hospitalizations. The expected reduction in hospitalization is adjusted for vaccination efforts. A correlation analysis of the data verifies that COVID-19 hospitalizations are highly correlated with wastewater viral signals with a time-varying relationship. Our DLNM based analysis yields a reasonable estimate of COVID-19 hospitalizations and enhances our understanding of the association of COVID-19 hospitalizations with wastewater viral signals. |
Link[3] Wastewater-based surveillance can be used to model COVID-19-associated workforce absenteeism
Author: Nicole Acosta, Xiaotian Dai, Tyler Williamson, Michael D. Parkins, et al. - Maria A. Bautista, Barbara J. Waddell, Jangwoo Lee, Kristine Du, Janine McCalder, Puja Pradhan, Chloe Papparis, Xuewen Lu, Thierry Chekouo, Alexander Krusina, Danielle Southern, Rhonda G. Clark, Raymond A. Patterson, Paul Westlund, Jon Meddings, Norma Ruecker, Christopher Lammiman, Coby Duerr, Gopal Achari, Steve E. Hrudey, Bonita E. Lee, Xiaoli Pang, Kevin Frankowski, Casey R.J. Hubert Publication date: 26 June 2023 Publication info: Science of The Total Environment, Volume 900, 2023, 165172, ISSN 0048-9697. Cited by: David Price 8:07 PM 10 December 2023 GMT Citerank: (5) 679891Tyler WilliamsonTyler Williamson is the Director of the Centre for Health Informatics, formerly the Associate Director. In addition, he is an Associate Professor of Biostatistics in the Department of Community Health Sciences as well as the Director of the Health Data Science and Biostatistics Diploma Program at the University of Calgary.10019D3ABAB, 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 704022Surveillance859FDEF6, 704045Covid-19859FDEF6, 715454Workforce impact859FDEF6 URL: DOI: https://doi.org/10.1016/j.scitotenv.2023.165172
| Excerpt / Summary [Science of The Total Environment, 26 June 2023]
Wastewater-based surveillance (WBS) of infectious diseases is a powerful tool for understanding community COVID-19 disease burden and informing public health policy. The potential of WBS for understanding COVID-19's impact in non-healthcare settings has not been explored to the same degree. Here we examined how SARS-CoV-2 measured from municipal wastewater treatment plants (WWTPs) correlates with workforce absenteeism. SARS-CoV-2 RNA N1 and N2 were quantified three times per week by RT-qPCR in samples collected at three WWTPs servicing Calgary and surrounding areas, Canada (1.4 million residents) between June 2020 and March 2022. Wastewater trends were compared to workforce absenteeism using data from the largest employer in the city (>15,000 staff). Absences were classified as being COVID-19-related, COVID-19-confirmed, and unrelated to COVID-19. Poisson regression was performed to generate a prediction model for COVID-19 absenteeism based on wastewater data. SARS-CoV-2 RNA was detected in 95.5 % (85/89) of weeks assessed. During this period 6592 COVID-19-related absences (1896 confirmed) and 4524 unrelated absences COVID-19 cases were recorded. A generalized linear regression using a Poisson distribution was performed to predict COVID-19-confirmed absences out of the total number of absent employees using wastewater data as a leading indicator (P < 0.0001). The Poisson regression with wastewater as a one-week leading signal has an Akaike information criterion (AIC) of 858, compared to a null model (excluding wastewater predictor) with an AIC of 1895. The likelihood-ratio test comparing the model with wastewater signal with the null model shows statistical significance (P < 0.0001). We also assessed the variation of predictions when the regression model was applied to new data, with the predicted values and corresponding confidence intervals closely tracking actual absenteeism data. Wastewater-based surveillance has the potential to be used by employers to anticipate workforce requirements and optimize human resource allocation in response to trackable respiratory illnesses like COVID-19. |
Link[4] A Bayesian framework for modeling COVID-19 case numbers through longitudinal monitoring of SARS-CoV-2 RNA in wastewater
Author: Xiaotian Dai, Nicole Acosta, Xuewen Lu, Casey R. J. Hubert, Jangwoo Lee, Kevin Frankowski, Maria A. Bautista, Barbara J. Waddell, Kristine Du, Janine McCalder, Jon Meddings, Norma Ruecker, Tyler Williamson, Danielle A. Southern, Jordan Hollman, Gopal Achari, M. Cathryn Ryan, Steve E. Hrudey, Bonita E. Lee, Xiaoli Pang, Rhonda G. Clark, Michael D. Parkins, Thierry Chekouo Publication date: 14 January 2024 Publication info: Statistics in Medicine, Volume 43, Issue 6 p. 1153-1169 Cited by: David Price 4:22 PM 1 March 2024 GMT Citerank: (4) 679891Tyler WilliamsonTyler Williamson is the Director of the Centre for Health Informatics, formerly the Associate Director. In addition, he is an Associate Professor of Biostatistics in the Department of Community Health Sciences as well as the Director of the Health Data Science and Biostatistics Diploma Program at the University of Calgary.10019D3ABAB, 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 704022Surveillance859FDEF6, 704045Covid-19859FDEF6 URL: DOI: https://doi.org/10.1002/sim.10009
| Excerpt / Summary [Statistics in Medicine, 14 January 2024]
Wastewater-based surveillance has become an important tool for research groups and public health agencies investigating and monitoring the COVID-19 pandemic and other public health emergencies including other pathogens and drug abuse. While there is an emerging body of evidence exploring the possibility of predicting COVID-19 infections from wastewater signals, there remain significant challenges for statistical modeling. Longitudinal observations of viral copies in municipal wastewater can be influenced by noisy datasets and missing values with irregular and sparse samplings. We propose an integrative Bayesian framework to predict daily positive cases from weekly wastewater observations with missing values via functional data analysis techniques. In a unified procedure, the proposed analysis models severe acute respiratory syndrome coronavirus-2 RNA wastewater signals as a realization of a smooth process with error and combines the smooth process with COVID-19 cases to evaluate the prediction of positive cases. We demonstrate that the proposed framework can achieve these objectives with high predictive accuracies through simulated and observed real data. |
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