Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19.
On March 23 2020, the UK enacted an intensive, nationwide lockdown to mitigate transmission of COVID-19. As restrictions began to ease, more localized interventions were used to target resurgences in transmission. Understanding the spatial scale of networks of human interaction, and how these networ...
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doaj-cf67060ad7544f9bb7c84488becd12502021-08-08T04:32:25ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-07-01177e100916210.1371/journal.pcbi.1009162Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19.Hamish GibbsEmily NightingaleYang LiuJames CheshireLeon DanonLiam SmeethCarl A B PearsonChris GrundyLSHTM CMMID COVID-19 working groupAdam J KucharskiRosalind M EggoOn March 23 2020, the UK enacted an intensive, nationwide lockdown to mitigate transmission of COVID-19. As restrictions began to ease, more localized interventions were used to target resurgences in transmission. Understanding the spatial scale of networks of human interaction, and how these networks change over time, is critical to targeting interventions at the most at-risk areas without unnecessarily restricting areas at low risk of resurgence. We use detailed human mobility data aggregated from Facebook users to determine how the spatially-explicit network of movements changed before and during the lockdown period, in response to the easing of restrictions, and to the introduction of locally-targeted interventions. We also apply community detection techniques to the weighted, directed network of movements to identify geographically-explicit movement communities and measure the evolution of these community structures through time. We found that the mobility network became more sparse and the number of mobility communities decreased under the national lockdown, a change that disproportionately affected long distance connections central to the mobility network. We also found that the community structure of areas in which locally-targeted interventions were implemented following epidemic resurgence did not show reorganization of community structure but did show small decreases in indicators of travel outside of local areas. We propose that communities detected using Facebook or other mobility data be used to assess the impact of spatially-targeted restrictions and may inform policymakers about the spatial extent of human movement patterns in the UK. These data are available in near real-time, allowing quantification of changes in the distribution of the population across the UK, as well as changes in travel patterns to inform our understanding of the impact of geographically-targeted interventions.https://doi.org/10.1371/journal.pcbi.1009162 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hamish Gibbs Emily Nightingale Yang Liu James Cheshire Leon Danon Liam Smeeth Carl A B Pearson Chris Grundy LSHTM CMMID COVID-19 working group Adam J Kucharski Rosalind M Eggo |
spellingShingle |
Hamish Gibbs Emily Nightingale Yang Liu James Cheshire Leon Danon Liam Smeeth Carl A B Pearson Chris Grundy LSHTM CMMID COVID-19 working group Adam J Kucharski Rosalind M Eggo Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. PLoS Computational Biology |
author_facet |
Hamish Gibbs Emily Nightingale Yang Liu James Cheshire Leon Danon Liam Smeeth Carl A B Pearson Chris Grundy LSHTM CMMID COVID-19 working group Adam J Kucharski Rosalind M Eggo |
author_sort |
Hamish Gibbs |
title |
Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. |
title_short |
Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. |
title_full |
Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. |
title_fullStr |
Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. |
title_full_unstemmed |
Detecting behavioural changes in human movement to inform the spatial scale of interventions against COVID-19. |
title_sort |
detecting behavioural changes in human movement to inform the spatial scale of interventions against covid-19. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2021-07-01 |
description |
On March 23 2020, the UK enacted an intensive, nationwide lockdown to mitigate transmission of COVID-19. As restrictions began to ease, more localized interventions were used to target resurgences in transmission. Understanding the spatial scale of networks of human interaction, and how these networks change over time, is critical to targeting interventions at the most at-risk areas without unnecessarily restricting areas at low risk of resurgence. We use detailed human mobility data aggregated from Facebook users to determine how the spatially-explicit network of movements changed before and during the lockdown period, in response to the easing of restrictions, and to the introduction of locally-targeted interventions. We also apply community detection techniques to the weighted, directed network of movements to identify geographically-explicit movement communities and measure the evolution of these community structures through time. We found that the mobility network became more sparse and the number of mobility communities decreased under the national lockdown, a change that disproportionately affected long distance connections central to the mobility network. We also found that the community structure of areas in which locally-targeted interventions were implemented following epidemic resurgence did not show reorganization of community structure but did show small decreases in indicators of travel outside of local areas. We propose that communities detected using Facebook or other mobility data be used to assess the impact of spatially-targeted restrictions and may inform policymakers about the spatial extent of human movement patterns in the UK. These data are available in near real-time, allowing quantification of changes in the distribution of the population across the UK, as well as changes in travel patterns to inform our understanding of the impact of geographically-targeted interventions. |
url |
https://doi.org/10.1371/journal.pcbi.1009162 |
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