Balancing quarantine and self-distancing measures in adaptive epidemic networks
Leonhard Horstmeyer, Christian Kuehn, Stefan Thurner

TL;DR
This paper models the interplay of social distancing and quarantine in controlling epidemics using adaptive networks and ODEs, revealing a mutual compensation effect and providing analytical bounds for infection spread.
Contribution
It introduces novel adaptive network models combining social distancing and quarantine, and develops an efficient analytical method to estimate epidemic thresholds and bounds.
Findings
Existence of a critical curve for epidemic threshold in parameter space.
Mutual compensation effect between social distancing and quarantine measures.
Analytical upper bounds for total infected individuals.
Abstract
We study the relative importance of two key control measures for epidemic spreading: endogenous social self-distancing and exogenous imposed quarantine. We use the framework of adaptive networks, moment-closure, and ordinary differential equations (ODEs) to introduce several novel models based upon susceptible-infected-recovered (SIR) dynamics. First, we compare computationally expensive, adaptive network simulations with their corresponding computationally highly efficient ODE equivalents and find excellent agreement. Second, we discover that there exists a relatively simple critical curve in parameter space for the epidemic threshold, which strongly suggests that there is a mutual compensation effect between the two mitigation strategies: as long as social distancing and quarantine measures are both sufficiently strong, large outbreaks are prevented. Third, we study the total number…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Mental Health Research Topics
