Spreading Processes with Mutations over Multi-layer Networks
Mansi Sood, Anirudh Sridhar, Rashad Eletreby, Chai Wah Wu, Simon A., Levin, H. Vincent Poor, Osman Yagan

TL;DR
This paper introduces a multi-layer multi-strain epidemiological model that accounts for pathogen mutations and heterogeneous contact settings, providing more accurate outbreak predictions and insights into mitigation strategies.
Contribution
It develops a novel multi-layer multi-strain framework incorporating mutations and contact heterogeneity, highlighting limitations of simplified models and informing intervention policies.
Findings
Simplified models can mispredict outbreak dynamics due to ignoring heterogeneity.
Mitigation measures in one network layer influence the emergence of new strains.
Network-layer considerations are crucial for effective epidemic control.
Abstract
A key scientific challenge during the outbreak of novel infectious diseases is to predict how the course of the epidemic changes under different countermeasures that limit interaction in the population. Most epidemiological models do not consider the role of mutations and heterogeneity in the type of contact events. However, pathogens have the capacity to mutate in response to changing environments, especially caused by the increase in population immunity to existing strains and the emergence of new pathogen strains poses a continued threat to public health. Further, in light of differing transmission risks in different congregate settings (e.g., schools and offices), different mitigation strategies may need to be adopted to control the spread of infection. We analyze a multi-layer multi-strain model by simultaneously accounting for i) pathways for mutations in the pathogen leading to…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Bioinformatics and Genomic Networks · Mental Health Research Topics
