Abstract

During the COVID-19 pandemic, governments have attempted to control infections within their territories by implementing border controls and lockdowns. While large-scale quarantine has been the most successful short-term policy, the enormous costs exerted by lockdowns over long periods are unsustainable. As such, developing more flexible policies that limit transmission without requiring large-scale quarantine is an urgent priority. Here, the dynamics of dismantled community mobility structures within US society during the COVID-19 outbreak are analysed by applying the Louvain method with modularity optimization to weekly datasets of mobile device locations. Our networks are built based on individuals' movements from February to May 2020. In a multi-scale community detection process using the locations of confirmed cases, natural break points from mobility patterns as well as high risk areas for contagion are identified at three scales. Deviations from administrative boundaries were observed in detected communities, indicating that policies informed by assumptions of disease containment within administrative boundaries do not account for high risk patterns of movement across and through these boundaries. We have designed a multi-level quarantine process that takes these deviations into account based on the heterogeneity in mobility patterns. For communities with high numbers of confirmed cases, contact tracing and associated quarantine policies informed by underlying dismantled community mobility structures is of increasing importance.

Highlights

  • The emergence and spread of the 2019 novel coronavirus (SARSCoV-2 or COVID-19) has caused a global health emergency

  • We summarize COVID-19 activity in the US in the first half of 20203 as well as statistics of weekly aggregated mobility data

  • The statistics count the number of relations, number of source and target census block groups (CBGs), sum of weights and the average weights of links in the networks

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Summary

Introduction

The emergence and spread of the 2019 novel coronavirus (SARSCoV-2 or COVID-19) has caused a global health emergency. Public health stakeholders race to find adequate methods for intervention as the outbreak spreads [2,3]. Analysing data about positive tests and locations of current patients plays a critical role in public health agencies ‘response’ [4]. After the first cases came to the US through international travels, COVID-19 spread occurred rapidly through the population in patients both with or without symptoms at the time of transmission. Quarantine policies and data related to the COVID-19 outbreak are based on arbitrary borders such as state or county boundary lines [6]. While state boundaries may serve constituents well in meeting certain social needs of their communities (e.g. infrastructure, taxes), they are not the most effective way to analyse data for anticipating disease outbreaks

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