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A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting

The COVID-19 pandemic is challenging nations with devastating health and economic consequences. The spread of the disease has revealed major geographical heterogeneity because of regionally varying individual behaviour and mobility patterns, unequal meteorological conditions, diverse viral variants,...

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Autores principales: Engebretsen, Solveig, Diz-Lois Palomares, Alfonso, Rø, Gunnar, Kristoffersen, Anja Bråthen, Lindstrøm, Jonas Christoffer, Engø-Monsen, Kenth, Kamineni, Meghana, Hin Chan, Louis Yat, Dale, Ørjan, Midtbø, Jørgen Eriksson, Stenerud, Kristian Lindalen, Di Ruscio, Francesco, White, Richard, Frigessi, Arnoldo, de Blasio, Birgitte Freiesleben
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894546/
https://www.ncbi.nlm.nih.gov/pubmed/36689468
http://dx.doi.org/10.1371/journal.pcbi.1010860
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author Engebretsen, Solveig
Diz-Lois Palomares, Alfonso
Rø, Gunnar
Kristoffersen, Anja Bråthen
Lindstrøm, Jonas Christoffer
Engø-Monsen, Kenth
Kamineni, Meghana
Hin Chan, Louis Yat
Dale, Ørjan
Midtbø, Jørgen Eriksson
Stenerud, Kristian Lindalen
Di Ruscio, Francesco
White, Richard
Frigessi, Arnoldo
de Blasio, Birgitte Freiesleben
author_facet Engebretsen, Solveig
Diz-Lois Palomares, Alfonso
Rø, Gunnar
Kristoffersen, Anja Bråthen
Lindstrøm, Jonas Christoffer
Engø-Monsen, Kenth
Kamineni, Meghana
Hin Chan, Louis Yat
Dale, Ørjan
Midtbø, Jørgen Eriksson
Stenerud, Kristian Lindalen
Di Ruscio, Francesco
White, Richard
Frigessi, Arnoldo
de Blasio, Birgitte Freiesleben
author_sort Engebretsen, Solveig
collection PubMed
description The COVID-19 pandemic is challenging nations with devastating health and economic consequences. The spread of the disease has revealed major geographical heterogeneity because of regionally varying individual behaviour and mobility patterns, unequal meteorological conditions, diverse viral variants, and locally implemented non-pharmaceutical interventions and vaccination roll-out. To support national and regional authorities in surveilling and controlling the pandemic in real-time as it unfolds, we here develop a new regional mathematical and statistical model. The model, which has been in use in Norway during the first two years of the pandemic, is informed by real-time mobility estimates from mobile phone data and laboratory-confirmed case and hospitalisation incidence. To estimate regional and time-varying transmissibility, case detection probabilities, and missed imported cases, we developed a novel sequential Approximate Bayesian Computation method allowing inference in useful time, despite the high parametric dimension. We test our approach on Norway and find that three-week-ahead predictions are precise and well-calibrated, enabling policy-relevant situational awareness at a local scale. By comparing the reproduction numbers before and after lockdowns, we identify spatially heterogeneous patterns in their effect on the transmissibility, with a stronger effect in the most populated regions compared to the national reduction estimated to be 85% (95% CI 78%-89%). Our approach is the first regional changepoint stochastic metapopulation model capable of real time spatially refined surveillance and forecasting during emergencies.
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spelling pubmed-98945462023-02-03 A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting Engebretsen, Solveig Diz-Lois Palomares, Alfonso Rø, Gunnar Kristoffersen, Anja Bråthen Lindstrøm, Jonas Christoffer Engø-Monsen, Kenth Kamineni, Meghana Hin Chan, Louis Yat Dale, Ørjan Midtbø, Jørgen Eriksson Stenerud, Kristian Lindalen Di Ruscio, Francesco White, Richard Frigessi, Arnoldo de Blasio, Birgitte Freiesleben PLoS Comput Biol Research Article The COVID-19 pandemic is challenging nations with devastating health and economic consequences. The spread of the disease has revealed major geographical heterogeneity because of regionally varying individual behaviour and mobility patterns, unequal meteorological conditions, diverse viral variants, and locally implemented non-pharmaceutical interventions and vaccination roll-out. To support national and regional authorities in surveilling and controlling the pandemic in real-time as it unfolds, we here develop a new regional mathematical and statistical model. The model, which has been in use in Norway during the first two years of the pandemic, is informed by real-time mobility estimates from mobile phone data and laboratory-confirmed case and hospitalisation incidence. To estimate regional and time-varying transmissibility, case detection probabilities, and missed imported cases, we developed a novel sequential Approximate Bayesian Computation method allowing inference in useful time, despite the high parametric dimension. We test our approach on Norway and find that three-week-ahead predictions are precise and well-calibrated, enabling policy-relevant situational awareness at a local scale. By comparing the reproduction numbers before and after lockdowns, we identify spatially heterogeneous patterns in their effect on the transmissibility, with a stronger effect in the most populated regions compared to the national reduction estimated to be 85% (95% CI 78%-89%). Our approach is the first regional changepoint stochastic metapopulation model capable of real time spatially refined surveillance and forecasting during emergencies. Public Library of Science 2023-01-23 /pmc/articles/PMC9894546/ /pubmed/36689468 http://dx.doi.org/10.1371/journal.pcbi.1010860 Text en © 2023 Engebretsen et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Engebretsen, Solveig
Diz-Lois Palomares, Alfonso
Rø, Gunnar
Kristoffersen, Anja Bråthen
Lindstrøm, Jonas Christoffer
Engø-Monsen, Kenth
Kamineni, Meghana
Hin Chan, Louis Yat
Dale, Ørjan
Midtbø, Jørgen Eriksson
Stenerud, Kristian Lindalen
Di Ruscio, Francesco
White, Richard
Frigessi, Arnoldo
de Blasio, Birgitte Freiesleben
A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title_full A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title_fullStr A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title_full_unstemmed A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title_short A real-time regional model for COVID-19: Probabilistic situational awareness and forecasting
title_sort real-time regional model for covid-19: probabilistic situational awareness and forecasting
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894546/
https://www.ncbi.nlm.nih.gov/pubmed/36689468
http://dx.doi.org/10.1371/journal.pcbi.1010860
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