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Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection

As several countries gradually release social distancing measures, rapid detection of new localized COVID-19 hotspots and subsequent intervention will be key to avoiding large-scale resurgence of transmission. We introduce ASMODEE (automatic selection of models and outlier detection for epidemics),...

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Autores principales: Jombart, Thibaut, Ghozzi, Stéphane, Schumacher, Dirk, Taylor, Timothy J., Leclerc, Quentin J., Jit, Mark, Flasche, Stefan, Greaves, Felix, Ward, Tom, Eggo, Rosalind M., Nightingale, Emily, Meakin, Sophie, Brady, Oliver J., Medley, Graham F., Höhle, Michael, Edmunds, W. John
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8165581/
https://www.ncbi.nlm.nih.gov/pubmed/34053271
http://dx.doi.org/10.1098/rstb.2020.0266
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author Jombart, Thibaut
Ghozzi, Stéphane
Schumacher, Dirk
Taylor, Timothy J.
Leclerc, Quentin J.
Jit, Mark
Flasche, Stefan
Greaves, Felix
Ward, Tom
Eggo, Rosalind M.
Nightingale, Emily
Meakin, Sophie
Brady, Oliver J.
Medley, Graham F.
Höhle, Michael
Edmunds, W. John
author_facet Jombart, Thibaut
Ghozzi, Stéphane
Schumacher, Dirk
Taylor, Timothy J.
Leclerc, Quentin J.
Jit, Mark
Flasche, Stefan
Greaves, Felix
Ward, Tom
Eggo, Rosalind M.
Nightingale, Emily
Meakin, Sophie
Brady, Oliver J.
Medley, Graham F.
Höhle, Michael
Edmunds, W. John
author_sort Jombart, Thibaut
collection PubMed
description As several countries gradually release social distancing measures, rapid detection of new localized COVID-19 hotspots and subsequent intervention will be key to avoiding large-scale resurgence of transmission. We introduce ASMODEE (automatic selection of models and outlier detection for epidemics), a new tool for detecting sudden changes in COVID-19 incidence. Our approach relies on automatically selecting the best (fitting or predicting) model from a range of user-defined time series models, excluding the most recent data points, to characterize the main trend in an incidence. We then derive prediction intervals and classify data points outside this interval as outliers, which provides an objective criterion for identifying departures from previous trends. We also provide a method for selecting the optimal breakpoints, used to define how many recent data points are to be excluded from the trend fitting procedure. The analysis of simulated COVID-19 outbreaks suggests ASMODEE compares favourably with a state-of-art outbreak-detection algorithm while being simpler and more flexible. As such, our method could be of wider use for infectious disease surveillance. We illustrate ASMODEE using publicly available data of National Health Service (NHS) Pathways reporting potential COVID-19 cases in England at a fine spatial scale, showing that the method would have enabled the early detection of the flare-ups in Leicester and Blackburn with Darwen, two to three weeks before their respective lockdown. ASMODEE is implemented in the free R package trendbreaker. This article is part of the theme issue ‘Modelling that shaped the early COVID-19 pandemic response in the UK’.
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spelling pubmed-81655812021-06-03 Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection Jombart, Thibaut Ghozzi, Stéphane Schumacher, Dirk Taylor, Timothy J. Leclerc, Quentin J. Jit, Mark Flasche, Stefan Greaves, Felix Ward, Tom Eggo, Rosalind M. Nightingale, Emily Meakin, Sophie Brady, Oliver J. Medley, Graham F. Höhle, Michael Edmunds, W. John Philos Trans R Soc Lond B Biol Sci Articles As several countries gradually release social distancing measures, rapid detection of new localized COVID-19 hotspots and subsequent intervention will be key to avoiding large-scale resurgence of transmission. We introduce ASMODEE (automatic selection of models and outlier detection for epidemics), a new tool for detecting sudden changes in COVID-19 incidence. Our approach relies on automatically selecting the best (fitting or predicting) model from a range of user-defined time series models, excluding the most recent data points, to characterize the main trend in an incidence. We then derive prediction intervals and classify data points outside this interval as outliers, which provides an objective criterion for identifying departures from previous trends. We also provide a method for selecting the optimal breakpoints, used to define how many recent data points are to be excluded from the trend fitting procedure. The analysis of simulated COVID-19 outbreaks suggests ASMODEE compares favourably with a state-of-art outbreak-detection algorithm while being simpler and more flexible. As such, our method could be of wider use for infectious disease surveillance. We illustrate ASMODEE using publicly available data of National Health Service (NHS) Pathways reporting potential COVID-19 cases in England at a fine spatial scale, showing that the method would have enabled the early detection of the flare-ups in Leicester and Blackburn with Darwen, two to three weeks before their respective lockdown. ASMODEE is implemented in the free R package trendbreaker. This article is part of the theme issue ‘Modelling that shaped the early COVID-19 pandemic response in the UK’. The Royal Society 2021-07-19 2021-05-31 /pmc/articles/PMC8165581/ /pubmed/34053271 http://dx.doi.org/10.1098/rstb.2020.0266 Text en © 2021 The Authors. https://creativecommons.org/licenses/by/4.0/Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, provided the original author and source are credited.
spellingShingle Articles
Jombart, Thibaut
Ghozzi, Stéphane
Schumacher, Dirk
Taylor, Timothy J.
Leclerc, Quentin J.
Jit, Mark
Flasche, Stefan
Greaves, Felix
Ward, Tom
Eggo, Rosalind M.
Nightingale, Emily
Meakin, Sophie
Brady, Oliver J.
Medley, Graham F.
Höhle, Michael
Edmunds, W. John
Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title_full Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title_fullStr Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title_full_unstemmed Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title_short Real-time monitoring of COVID-19 dynamics using automated trend fitting and anomaly detection
title_sort real-time monitoring of covid-19 dynamics using automated trend fitting and anomaly detection
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8165581/
https://www.ncbi.nlm.nih.gov/pubmed/34053271
http://dx.doi.org/10.1098/rstb.2020.0266
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