Inferring Metapopulation Propagation Network for Intra-city Epidemic Control and Prevention
Jingyuan Wang, Xiaojian Wang, Junjie Wu

TL;DR
This paper introduces a novel two-step approach combining a network inference model and an extended SIR model to better understand and predict intra-city epidemic propagation across metapopulations, validated on real data.
Contribution
It proposes the D$^2$PRI network inference model and extends the classic SIR model for metapopulation dynamics, improving epidemic modeling accuracy.
Findings
D$^2$PRI accurately infers infection networks from data.
Extended SIR model predicts disease spread effectively.
Model outperforms existing methods in outbreak simulation.
Abstract
Since the 21st century, the global outbreaks of infectious diseases such as SARS in 2003, H1N1 in 2009, and H7N9 in 2013, have become the critical threat to the public health and a hunting nightmare to the government. Understanding the propagation in large-scale metapopulations and predicting the future outbreaks thus become crucially important for epidemic control and prevention. In the literature, there have been a bulk of studies on modeling intra-city epidemic propagation but with the single population assumption (homogeneity). Some recent works on metapopulation propagation, however, focus on finding specific human mobility physical networks to approximate diseases transmission networks, whose generality to fit different diseases cannot be guaranteed. In this paper, we argue that the intra-city epidemic propagation should be modeled on a metapopulation base, and propose a two-step…
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Taxonomy
TopicsComplex Network Analysis Techniques · Human Mobility and Location-Based Analysis · COVID-19 epidemiological studies
