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Efficient and targeted COVID-19 border testing via reinforcement learning
Efficient and targeted COVID-19 border testing via reinforcement learning
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Efficient and targeted COVID-19 border testing via reinforcement learning
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Efficient and targeted COVID-19 border testing via reinforcement learning
Efficient and targeted COVID-19 border testing via reinforcement learning

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Efficient and targeted COVID-19 border testing via reinforcement learning
Efficient and targeted COVID-19 border testing via reinforcement learning
Journal Article

Efficient and targeted COVID-19 border testing via reinforcement learning

2021
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Overview
Throughout the coronavirus disease 2019 (COVID-19) pandemic, countries have relied on a variety of ad hoc border control protocols to allow for non-essential travel while safeguarding public health, from quarantining all travellers to restricting entry from select nations on the basis of population-level epidemiological metrics such as cases, deaths or testing positivity rates 1 , 2 . Here we report the design and performance of a reinforcement learning system, nicknamed Eva. In the summer of 2020, Eva was deployed across all Greek borders to limit the influx of asymptomatic travellers infected with severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), and to inform border policies through real-time estimates of COVID-19 prevalence. In contrast to country-wide protocols, Eva allocated Greece’s limited testing resources on the basis of incoming travellers’ demographic information and testing results from previous travellers. By comparing Eva’s performance against modelled counterfactual scenarios, we show that Eva identified 1.85 times as many asymptomatic, infected travellers as random surveillance testing, with up to 2–4 times as many during peak travel, and 1.25–1.45 times as many asymptomatic, infected travellers as testing policies that utilize only epidemiological metrics. We demonstrate that this latter benefit arises, at least partially, because population-level epidemiological metrics had limited predictive value for the actual prevalence of SARS-CoV-2 among asymptomatic travellers and exhibited strong country-specific idiosyncrasies in the summer of 2020. Our results raise serious concerns on the effectiveness of country-agnostic internationally proposed border control policies 3 that are based on population-level epidemiological metrics. Instead, our work represents a successful example of the potential of reinforcement learning and real-time data for safeguarding public health. A study reports the design and performance of a reinforcement learning algorithm that enabled efficient and targeted SARS-CoV-2 testing of passengers travelling to Greece in the summer of 2020.