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Networks and epidemic models.

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TLDR
A variety of methods are described that allow the mixing network, or an approximation to the network, to be ascertained and how the two fields of network theory and epidemiological modelling can deliver an improved understanding of disease dynamics and better public health through effective disease control are suggested.
Abstract
Networks and the epidemiology of directly transmitted infectious diseases are fundamentally linked. The foundations of epidemiology and early epidemiological models were based on population wide random-mixing, but in practice each individual has a finite set of contacts to whom they can pass infection; the ensemble of all such contacts forms a ‘mixing network’. Knowledge of the structure of the network allows models to compute the epidemic dynamics at the population scale from the individual-level behaviour of infections. Therefore, characteristics of mixing networks—and how these deviate from the random-mixing norm—have become important applied concerns that may enhance the understanding and prediction of epidemic patterns and intervention measures. Here, we review the basis of epidemiological theory (based on random-mixing models) and network theory (based on work from the social sciences and graph theory). We then describe a variety of methods that allow the mixing network, or an approximation to the network, to be ascertained. It is often the case that time and resources limit our ability to accurately find all connections within a network, and hence a generic understanding of the relationship between network structure and disease dynamics is needed. Therefore, we review some of the variety of idealized network types and approximation techniques that have been utilized to elucidate this link. Finally, we look to the future to suggest how the two fields of network theory and epidemiological modelling can deliver an improved understanding of disease dynamics and better public health through effective disease control.

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References
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Journal ArticleDOI

On the critical behavior of the general epidemic process and dynamical percolation

TL;DR: In this paper, scaling laws are formulated for the behavior of a space-dependent fluctuating general epidemic process near the critical point, restricted to stationary properties, and these laws describe also the critical behavior of random percolation.
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Small World Effect in an Epidemiological Model

TL;DR: A model for the spread of an infection is analyzed for different population structures and finds a transition to self-sustained oscillations in the size of the infected subpopulation at a finite value of the disorder of the network.
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Modeling dynamic and network heterogeneities in the spread of sexually transmitted diseases.

TL;DR: An intuitive mathematical framework is developed to deal with the heterogeneities implicit within contact networks and those that arise because of the infection process, and these models are compared with full stochastic simulations and show excellent agreement across a wide range of parameters.