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Testing and tracking in the UK: A dynamic causal modelling study

Authors :
Thomas Parr
Oliver J. Hulme
Karl J. Friston
Alexander J. Billig
Vladimir Litvak
Christian Lambert
Adeel Razi
Jean Daunizeau
Cathy J. Price
Rosalyn J. Moran
Guillaume Flandin
Peter Zeidman
Source :
Wellcome Open Research. 5:144
Publication Year :
2020
Publisher :
F1000 Research Ltd, 2020.

Abstract

By equipping a previously reported dynamic causal modelling of COVID-19 with an isolation state, we were able to model the effects of self-isolation consequent on testing and tracking. Specifically, we included a quarantine or isolation state occupied by people who believe they might be infected but are asymptomatic—and could only leave if they test negative. We recovered maximum posteriori estimates of the model parameters using time series of new cases, daily deaths, and tests for the UK. These parameters were used to simulate the trajectory of the outbreak in the UK over an 18-month period. Several clear-cut conclusions emerged from these simulations. For example, under plausible (graded) relaxations of social distancing, a rebound of infections is highly unlikely. The emergence of a second wave depends almost exclusively on the rate at which we lose immunity, inherited from the first wave. There exists no testing strategy that can attenuate mortality rates, other than by deferring or delaying a second wave. A testing and tracking policy—implemented at the present time—will defer any second wave beyond a time horizon of 18 months. Crucially, this deferment is within current testing capabilities (requiring an efficacy of tracing and tracking of about 20% of asymptomatic infected cases, with 50,000 tests per day). These conclusions are based upon a dynamic causal model for which we provide some construct and face validation—using a comparative analysis of the United Kingdom and Germany, supplemented with recent serological studies.

Details

ISSN :
2398502X
Volume :
5
Database :
OpenAIRE
Journal :
Wellcome Open Research
Accession number :
edsair.doi...........3d41a982fd5b41a957a7c328769bb7e1
Full Text :
https://doi.org/10.12688/wellcomeopenres.16004.1