Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.

Epidemiological simulations as a method are used to better understand and predict the spreading of infectious diseases, for example of COVID-19. This paper presents an approach that combines a well-established approach from transportation modelling that uses person-centric data-driven human mobility...

Descripción completa

Guardado en:
Detalles Bibliográficos
Autores principales: Sebastian A Müller, Michael Balmer, William Charlton, Ricardo Ewert, Andreas Neumann, Christian Rakow, Tilmann Schlenther, Kai Nagel
Formato: article
Lenguaje:EN
Publicado: Public Library of Science (PLoS) 2021
Materias:
R
Q
Acceso en línea:https://doaj.org/article/2e110525ccfe4083bf3eec74d7bc92c0
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
id oai:doaj.org-article:2e110525ccfe4083bf3eec74d7bc92c0
record_format dspace
spelling oai:doaj.org-article:2e110525ccfe4083bf3eec74d7bc92c02021-12-02T20:13:24ZPredicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.1932-620310.1371/journal.pone.0259037https://doaj.org/article/2e110525ccfe4083bf3eec74d7bc92c02021-01-01T00:00:00Zhttps://doi.org/10.1371/journal.pone.0259037https://doaj.org/toc/1932-6203Epidemiological simulations as a method are used to better understand and predict the spreading of infectious diseases, for example of COVID-19. This paper presents an approach that combines a well-established approach from transportation modelling that uses person-centric data-driven human mobility modelling with a mechanistic infection model and a person-centric disease progression model. The model includes the consequences of different room sizes, air exchange rates, disease import, changed activity participation rates over time (coming from mobility data), masks, indoors vs. outdoors leisure activities, and of contact tracing. It is validated against the infection dynamics in Berlin (Germany). The model can be used to understand the contributions of different activity types to the infection dynamics over time. It predicts the effects of contact reductions, school closures/vacations, masks, or the effect of moving leisure activities from outdoors to indoors in fall, and is thus able to quantitatively predict the consequences of interventions. It is shown that these effects are best given as additive changes of the reproduction number R. The model also explains why contact reductions have decreasing marginal returns, i.e. the first 50% of contact reductions have considerably more effect than the second 50%. Our work shows that is is possible to build detailed epidemiological simulations from microscopic mobility models relatively quickly. They can be used to investigate mechanical aspects of the dynamics, such as the transmission from political decisions via human behavior to infections, consequences of different lockdown measures, or consequences of wearing masks in certain situations. The results can be used to inform political decisions.Sebastian A MüllerMichael BalmerWilliam CharltonRicardo EwertAndreas NeumannChristian RakowTilmann SchlentherKai NagelPublic Library of Science (PLoS)articleMedicineRScienceQENPLoS ONE, Vol 16, Iss 10, p e0259037 (2021)
institution DOAJ
collection DOAJ
language EN
topic Medicine
R
Science
Q
spellingShingle Medicine
R
Science
Q
Sebastian A Müller
Michael Balmer
William Charlton
Ricardo Ewert
Andreas Neumann
Christian Rakow
Tilmann Schlenther
Kai Nagel
Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
description Epidemiological simulations as a method are used to better understand and predict the spreading of infectious diseases, for example of COVID-19. This paper presents an approach that combines a well-established approach from transportation modelling that uses person-centric data-driven human mobility modelling with a mechanistic infection model and a person-centric disease progression model. The model includes the consequences of different room sizes, air exchange rates, disease import, changed activity participation rates over time (coming from mobility data), masks, indoors vs. outdoors leisure activities, and of contact tracing. It is validated against the infection dynamics in Berlin (Germany). The model can be used to understand the contributions of different activity types to the infection dynamics over time. It predicts the effects of contact reductions, school closures/vacations, masks, or the effect of moving leisure activities from outdoors to indoors in fall, and is thus able to quantitatively predict the consequences of interventions. It is shown that these effects are best given as additive changes of the reproduction number R. The model also explains why contact reductions have decreasing marginal returns, i.e. the first 50% of contact reductions have considerably more effect than the second 50%. Our work shows that is is possible to build detailed epidemiological simulations from microscopic mobility models relatively quickly. They can be used to investigate mechanical aspects of the dynamics, such as the transmission from political decisions via human behavior to infections, consequences of different lockdown measures, or consequences of wearing masks in certain situations. The results can be used to inform political decisions.
format article
author Sebastian A Müller
Michael Balmer
William Charlton
Ricardo Ewert
Andreas Neumann
Christian Rakow
Tilmann Schlenther
Kai Nagel
author_facet Sebastian A Müller
Michael Balmer
William Charlton
Ricardo Ewert
Andreas Neumann
Christian Rakow
Tilmann Schlenther
Kai Nagel
author_sort Sebastian A Müller
title Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
title_short Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
title_full Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
title_fullStr Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
title_full_unstemmed Predicting the effects of COVID-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
title_sort predicting the effects of covid-19 related interventions in urban settings by combining activity-based modelling, agent-based simulation, and mobile phone data.
publisher Public Library of Science (PLoS)
publishDate 2021
url https://doaj.org/article/2e110525ccfe4083bf3eec74d7bc92c0
work_keys_str_mv AT sebastianamuller predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT michaelbalmer predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT williamcharlton predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT ricardoewert predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT andreasneumann predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT christianrakow predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT tilmannschlenther predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
AT kainagel predictingtheeffectsofcovid19relatedinterventionsinurbansettingsbycombiningactivitybasedmodellingagentbasedsimulationandmobilephonedata
_version_ 1718374756110041088