Abstract

During the early months of the current COVID-19 pandemic, social distancing measures effectively slowed disease transmission in many countries in Europe and Asia, but the same benefits have not been observed in some developing countries such as Brazil. In part, this is due to a failure to organise systematic testing campaigns at nationwide or even regional levels. To gain effective control of the pandemic, decision-makers in developing countries, particularly those with large populations, must overcome difficulties posed by an unequal distribution of wealth combined with low daily testing capacities. The economic infrastructure of these countries, often concentrated in a few cities, forces workers to travel from commuter cities and rural areas, which induces strong nonlinear effects on disease transmission. In the present study, we develop a smart testing strategy to identify geographic regions where COVID-19 testing could most effectively be deployed to limit further disease transmission. By smart testing we mean the testing protocol that is automatically designed by our optimization platform for a given time period, knowing the available number of tests, the current availability of ICU beds and the initial epidemiological situation. The strategy uses readily available anonymised mobility and demographic data integrated with intensive care unit (ICU) occupancy data and city-specific social distancing measures. Taking into account the heterogeneity of ICU bed occupancy in differing regions and the stages of disease evolution, we use a data-driven study of the Brazilian state of Sao Paulo as an example to show that smart testing strategies can rapidly limit transmission while reducing the need for social distancing measures, even when testing capacity is limited.

Highlights

  • ObjectivesWe aim to control disease spreading after relaxing social distancing by deploying smart testing and coordinated intensive care unit (ICU) bed sharing alone

  • Brazil has struggled deeply to curb the transmission of COVID-19

  • Assuming that a positive test for COVID-19 alters an individual’s behaviour, testing programs affect the mobility patterns of infected individuals who commute between home and work and generates nonlinear interactions between regions of the state

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Summary

Objectives

We aim to control disease spreading after relaxing social distancing by deploying smart testing and coordinated ICU bed sharing alone

Methods
Results
Conclusion
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