Dynamics of new strain emergence on a temporal network
Sukankana Chakraborty, Xavier R. Hoffmann, Marc G. Leguia, Felix, Nolet, Elisenda Ortiz, Ottavia Prunas, Leonardo Zavojanni, Eugenio Valdano,, Chiara Poletto

TL;DR
This study investigates how the temporal dynamics of networks influence the competition and emergence of new strains in multi-strain infectious processes, using real hospital contact data.
Contribution
It provides new insights into how temporal network structures affect strain competition outcomes, highlighting the importance of activity patterns and initial conditions.
Findings
Emergence timing greatly affects strain replacement probability.
Temporal network structure influences competition outcomes.
Activity variations impact coexistence duration.
Abstract
Multi-strain competition on networks is observed in many contexts, including infectious disease ecology, information dissemination or behavioral adaptation to epidemics. Despite a substantial body of research has been developed considering static, time-aggregated networks, it remains a challenge to understand the transmission of concurrent strains when links of the network are created and destroyed over time. Here we analyze how network dynamics shapes the outcome of the competition between an initially endemic strain and an emerging one, when both strains follow a susceptible-infected-susceptible dynamics, and spread at time scales comparable with the network evolution one. Using time-resolved data of close-proximity interactions between patients admitted to a hospital and medical health care workers, we analyze the impact of temporal patterns and initial conditions on the dominance…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Evolution and Genetic Dynamics · COVID-19 epidemiological studies
