Predicting Spatial Transmission At The Early Stage Of Epidemics On A Networked Metapopulation

2016 12TH IEEE INTERNATIONAL CONFERENCE ON CONTROL AND AUTOMATION (ICCA)(2016)

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摘要
Realization of accurate real-time predictions of infectious diseases is an important but challenging task, because spatial transmission among networked populations is stochastic and time-varying. In this paper, we propose a new algorithm to predict the susceptible subpopulations which will he infected in the next time step at the early stage of an epidemic on a metapopulation network by using data of infection and topology. We first estimate the epidemic infection rate, which helps us to infer the increment of newly infected individuals during a unit time. Then we predict the possible infected subpopulations by ranking the infected likelihoods of corresponding susceptible subpopulations. The simulation results on the Barabasi-Albert scale-free metapopulation network verify the performance of our algorithm.
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关键词
real-time spatial transmission predictions,infectious diseases,stochastic system,time-varying system,susceptible subpopulations,infection data,topology,epidemic infection rate,infected individuals,infected subpopulations,infected likelihoods,Barabasi-Albert scale-free metapopulation network
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