Network-based prediction of COVID-19 epidemic spreading in Italy

被引:0
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作者
Clara Pizzuti
Annalisa Socievole
Bastian Prasse
Piet Van Mieghem
机构
[1] Institute for High Performance Computing and Networking (ICAR),National Research Council of Italy (CNR)
[2] Delft University of Technology,Faculty of Electrical Engineering, Mathematics and Computer Science
来源
Applied Network Science | / 5卷
关键词
Network inference; Epidemiology; COVID-19; Coronavirus; SIR model; Transmission modifier;
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摘要
Initially emerged in the Chinese city Wuhan and subsequently spread almost worldwide causing a pandemic, the SARS-CoV-2 virus follows reasonably well the Susceptible–Infectious–Recovered (SIR) epidemic model on contact networks in the Chinese case. In this paper, we investigate the prediction accuracy of the SIR model on networks also for Italy. Specifically, the Italian regions are a metapopulation represented by network nodes and the network links are the interactions between those regions. Then, we modify the network-based SIR model in order to take into account the different lockdown measures adopted by the Italian Government in the various phases of the spreading of the COVID-19. Our results indicate that the network-based model better predicts the daily cumulative infected individuals when time-varying lockdown protocols are incorporated in the classical SIR model.
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