Litcius/Paper detail

Network spreading among areas: A dynamical complex network modeling approach

Qin Li, Hongkai Chen, Yuhan Li, Minyu Feng, Jürgen Kurths

2022Chaos An Interdisciplinary Journal of Nonlinear Science26 citationsDOIOpen Access PDF

Abstract

With the outbreak of COVID-19, great loss and damage were brought to human society, making the study of epidemic spreading become a significant topic nowadays. To analyze the spread of infectious diseases among different areas, e.g., communities, cities, or countries, we construct a network, based on the epidemic model and the network coupling, whose nodes denote areas, and edges represent population migrations between two areas. Each node follows its dynamic, which describes an epidemic spreading among individuals in an area, and the node also interacts with other nodes, which indicates the spreading among different areas. By giving mathematical proof, we deduce that our model has a stable solution despite the network structure. We propose the peak infected ratio (PIR) as a property of infectious diseases in a certain area, which is not independent of the network structure. We find that increasing the population mobility or the disease infectiousness both cause higher peak infected population all over different by simulation. Furthermore, we apply our model to real-world data on COVID-19 and after properly adjusting the parameters of our model, the distribution of the peak infection ratio in different areas can be well fitted.

Topics & Concepts

Node (physics)PopulationOutbreakConstruct (python library)Network structureGeographyEpidemic modelComplex networkCoronavirus disease 2019 (COVID-19)Computer scienceInfectious disease (medical specialty)Network modelDistribution (mathematics)Property (philosophy)Economic geographyComputer networkMathematicsDemographyDistributed computingDiseaseVirologyEngineeringBiologyData miningMedicineSociologyStructural engineeringEpistemologyMathematical analysisWorld Wide WebPathologyPhilosophyComplex Network Analysis TechniquesCOVID-19 epidemiological studiesOpinion Dynamics and Social Influence