Centrality-Based Traffic Restriction in Delayed Epidemic Networks
Atefe Darabi, Milad Siami

TL;DR
This paper investigates how time-delay affects epidemic spread in networks and proposes a centrality-based traffic restriction method to control outbreaks while maintaining overall traffic volume.
Contribution
It introduces a novel centrality-based approach for epidemic control that accounts for time-delay effects and network topology in meta-population networks.
Findings
Time-delay significantly influences epidemic peak timing and intensity.
Targeted isolation of high-centrality sub-populations effectively reduces outbreak severity.
Considering worst-case scenarios improves epidemic containment strategies.
Abstract
During an epidemic, infectious individuals might not be detectable until some time after becoming infected. The studies show that carriers with mild or no symptoms are the main contributors to the transmission of a virus within the population. The average time it takes to develop the symptoms causes a delay in the spread dynamics of the disease. When considering the influence of delay on the disease propagation in epidemic networks, depending on the value of the time-delay and the network topology, the peak of epidemic could be considerably different in time, duration, and intensity. Motivated by the recent worldwide outbreak of the COVID-19 virus and the topological extent in which this virus has spread over the course of a few months, this study aims to highlight the effect of time-delay in the progress of such infectious diseases in the meta-population networks rather than…
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Taxonomy
TopicsComplex Network Analysis Techniques · COVID-19 epidemiological studies · Mental Health Research Topics
