Author:
Burbano Lombana Daniel Alberto,Zino Lorenzo,Butail Sachit,Caroppo Emanuele,Jiang Zhong-Ping,Rizzo Alessandro,Porfiri Maurizio
Abstract
AbstractThe emergency generated by the current COVID-19 pandemic has claimed millions of lives worldwide. There have been multiple waves across the globe that emerged as a result of new variants, due to arising from unavoidable mutations. The existing network toolbox to study epidemic spreading cannot be readily adapted to the study of multiple, coexisting strains. In this context, particularly lacking are models that could elucidate re-infection with the same strain or a different strain—phenomena that we are seeing experiencing more and more with COVID-19. Here, we establish a novel mathematical model to study the simultaneous spreading of two strains over a class of temporal networks. We build on the classical susceptible–exposed–infectious–removed model, by incorporating additional states that account for infections and re-infections with multiple strains. The temporal network is based on the activity-driven network paradigm, which has emerged as a model of choice to study dynamic processes that unfold at a time scale comparable to the network evolution. We draw analytical insight from the dynamics of the stochastic network systems through a mean-field approach, which allows for characterizing the onset of different behavioral phenotypes (non-epidemic, epidemic, and endemic). To demonstrate the practical use of the model, we examine an intermittent stay-at-home containment strategy, in which a fraction of the population is randomly required to isolate for a fixed period of time.
Funder
National Science Foundation, United States
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Computer Networks and Communications,Multidisciplinary
Reference75 articles.
1. Aleta A, Martin-Corral D, Pastorey Piontti A, Ajelli M, Litvinova M, Chinazzi M, Dean NE, Halloran ME, Longini IM Jr, Merler S et al (2020) Modelling the impact of testing, contact tracing and household quarantine on second waves of COVID-19. Nat Hum Behav 4(9):964–971
2. Andreasen V, Lin J, Levin SA (1997) The dynamics of cocirculating influenza strains conferring partial cross-immunity. J Math Biol 35(7):825–842
3. Arenas A, Cota W, Gómez-Gardeñes J, Gómez S, Granell C, Matamalas JT, Soriano-Paños D, Steinegger B (2020) Modeling the spatiotemporal epidemic spreading of COVID-19 and the impact of mobility and social distancing interventions. Phys Rev X 10:041055
4. Arruda EF, Das SS, Dias CM, Pastore DH (2021) Modelling and optimal control of multi strain epidemics, with application to COVID-19. PLoS ONE 16(9):0257512
5. Azizi A, Komarova NL, Wodarz D (2021) Effect of human behavior on the evolution of viral strains during an epidemic. bioRxiv. https://doi.org/10.1101/2021.09.09.459585
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献