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Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study

BACKGROUND: As many countries seek to slow the spread of COVID-19 without reimposing national restrictions, it has become important to track the disease at a local level to identify areas in need of targeted intervention. METHODS: We performed modelling on longitudinal, self-reported data from users...

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Autores principales: Varsavsky, Thomas, Graham, Mark S., Canas, Liane S., Ganesh, Sajaysurya, Pujol, Joan Capdevila, Sudre, Carole H., Murray, Benjamin, Modat, Marc, Cardoso, M. Jorge, Astley, Christina M., Drew, David A, Nguyen, Long H., Fall, Tove, Gomez, Maria F, Franks, Paul W., Chan, Andrew T., Davies, Richard, Wolf, Jonathan, Steves, Claire J., Spector, Tim D., Ourselin, Sebastien
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7605586/
https://www.ncbi.nlm.nih.gov/pubmed/33140073
http://dx.doi.org/10.1101/2020.10.26.20219659
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author Varsavsky, Thomas
Graham, Mark S.
Canas, Liane S.
Ganesh, Sajaysurya
Pujol, Joan Capdevila
Sudre, Carole H.
Murray, Benjamin
Modat, Marc
Cardoso, M. Jorge
Astley, Christina M.
Drew, David A
Nguyen, Long H.
Fall, Tove
Gomez, Maria F
Franks, Paul W.
Chan, Andrew T.
Davies, Richard
Wolf, Jonathan
Steves, Claire J.
Spector, Tim D.
Ourselin, Sebastien
author_facet Varsavsky, Thomas
Graham, Mark S.
Canas, Liane S.
Ganesh, Sajaysurya
Pujol, Joan Capdevila
Sudre, Carole H.
Murray, Benjamin
Modat, Marc
Cardoso, M. Jorge
Astley, Christina M.
Drew, David A
Nguyen, Long H.
Fall, Tove
Gomez, Maria F
Franks, Paul W.
Chan, Andrew T.
Davies, Richard
Wolf, Jonathan
Steves, Claire J.
Spector, Tim D.
Ourselin, Sebastien
author_sort Varsavsky, Thomas
collection PubMed
description BACKGROUND: As many countries seek to slow the spread of COVID-19 without reimposing national restrictions, it has become important to track the disease at a local level to identify areas in need of targeted intervention. METHODS: We performed modelling on longitudinal, self-reported data from users of the COVID Symptom Study app in England between 24 March and 29 September, 2020. Combining a symptom-based predictive model for COVID-19 positivity and RT-PCR tests provided by the Department of Health we were able to estimate disease incidence, prevalence and effective reproduction number. Geographically granular estimates were used to highlight regions with rapidly increasing case numbers, or hotspots. FINDINGS: More than 2.8 million app users in England provided 120 million daily reports of their symptoms, and recorded the results of 170,000 PCR tests. On a national level our estimates of incidence and prevalence showed similar sensitivity to changes as two national community surveys: the ONS and REACT-1 studies. On 28 September 2020 we estimated 15,841 (95% CI 14,023–17,885) daily cases, a prevalence of 0.53% (95% CI 0.45–0.60), and R(t) of 1.17 (95% credible interval 1.15–1.19) in England. On a geographically granular level, on 28 September 2020 we detected 15 of the 20 regions with highest incidence according to Government test data, with indications that our method may be able to detect rapid case increases in regions where Government testing provision is more limited. INTERPRETATION: Self-reported data from mobile applications can provide an agile resource to inform policymakers during a fast-moving pandemic, serving as an independent and complementary resource to more traditional instruments for disease surveillance. FUNDING: Zoe Global Limited, Department of Health, Wellcome Trust, EPSRC, NIHR, MRC, Alzheimer’s Society.
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spelling pubmed-76055862020-11-03 Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study Varsavsky, Thomas Graham, Mark S. Canas, Liane S. Ganesh, Sajaysurya Pujol, Joan Capdevila Sudre, Carole H. Murray, Benjamin Modat, Marc Cardoso, M. Jorge Astley, Christina M. Drew, David A Nguyen, Long H. Fall, Tove Gomez, Maria F Franks, Paul W. Chan, Andrew T. Davies, Richard Wolf, Jonathan Steves, Claire J. Spector, Tim D. Ourselin, Sebastien medRxiv Article BACKGROUND: As many countries seek to slow the spread of COVID-19 without reimposing national restrictions, it has become important to track the disease at a local level to identify areas in need of targeted intervention. METHODS: We performed modelling on longitudinal, self-reported data from users of the COVID Symptom Study app in England between 24 March and 29 September, 2020. Combining a symptom-based predictive model for COVID-19 positivity and RT-PCR tests provided by the Department of Health we were able to estimate disease incidence, prevalence and effective reproduction number. Geographically granular estimates were used to highlight regions with rapidly increasing case numbers, or hotspots. FINDINGS: More than 2.8 million app users in England provided 120 million daily reports of their symptoms, and recorded the results of 170,000 PCR tests. On a national level our estimates of incidence and prevalence showed similar sensitivity to changes as two national community surveys: the ONS and REACT-1 studies. On 28 September 2020 we estimated 15,841 (95% CI 14,023–17,885) daily cases, a prevalence of 0.53% (95% CI 0.45–0.60), and R(t) of 1.17 (95% credible interval 1.15–1.19) in England. On a geographically granular level, on 28 September 2020 we detected 15 of the 20 regions with highest incidence according to Government test data, with indications that our method may be able to detect rapid case increases in regions where Government testing provision is more limited. INTERPRETATION: Self-reported data from mobile applications can provide an agile resource to inform policymakers during a fast-moving pandemic, serving as an independent and complementary resource to more traditional instruments for disease surveillance. FUNDING: Zoe Global Limited, Department of Health, Wellcome Trust, EPSRC, NIHR, MRC, Alzheimer’s Society. Cold Spring Harbor Laboratory 2020-11-17 /pmc/articles/PMC7605586/ /pubmed/33140073 http://dx.doi.org/10.1101/2020.10.26.20219659 Text en https://creativecommons.org/licenses/by-nc/4.0/This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (https://creativecommons.org/licenses/by-nc/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format for noncommercial purposes only, and only so long as attribution is given to the creator.
spellingShingle Article
Varsavsky, Thomas
Graham, Mark S.
Canas, Liane S.
Ganesh, Sajaysurya
Pujol, Joan Capdevila
Sudre, Carole H.
Murray, Benjamin
Modat, Marc
Cardoso, M. Jorge
Astley, Christina M.
Drew, David A
Nguyen, Long H.
Fall, Tove
Gomez, Maria F
Franks, Paul W.
Chan, Andrew T.
Davies, Richard
Wolf, Jonathan
Steves, Claire J.
Spector, Tim D.
Ourselin, Sebastien
Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title_full Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title_fullStr Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title_full_unstemmed Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title_short Detecting COVID-19 infection hotspots in England using large-scale self-reported data from a mobile application: a prospective, observational study
title_sort detecting covid-19 infection hotspots in england using large-scale self-reported data from a mobile application: a prospective, observational study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7605586/
https://www.ncbi.nlm.nih.gov/pubmed/33140073
http://dx.doi.org/10.1101/2020.10.26.20219659
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