Susceptible-infectious-recovered models revisited: From the individual level to the population level
Authored by Pierre Magal, Shigui Ruan
Date Published: 2014
DOI: 10.1016/j.mbs.2014.02.001
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Abstract
The classical susceptible-infectious-recovered (SIR) model, originated
from the seminal papers of Ross {[}51] and Ross and Hudson {[}52,53] in
1916-1917 and the fundamental contributions of Kermack and McKendrick
{[}36-38] in 1927-1932, describes the transmission of infectious
diseases between susceptible and infective individuals and provides the
basic framework for almost all later epidemic models, including
stochastic epidemic models using Monte Carlo simulations or
individual-based models (IBM). In this paper, by defining the rules of
contacts between Susceptible and infective individuals, the rules of
transmission of diseases through these contacts, and the time of
transmission during contacts, we provide detailed comparisons between
the classical deterministic SIR model and the IBM stochastic simulations
of the model. More specifically, for the purpose of numerical and
stochastic simulations we distinguish two types of transmission
processes: that initiated by susceptible individuals and that driven by
infective individuals. Our analysis and simulations demonstrate that in
both cases the IBM converges to the classical SIR model only in some
particular situations. In general, the classical and individual-based
SIR models are significantly different. Our study reveals that the
timing of transmission in a contact at the individual level plays a
crucial role in determining the transmission dynamics of an infectious
disease at the population level. (C) 2014 Elsevier Inc. All rights
reserved.
Tags
epidemics
networks
scale
Mathematical-theory
Diseases
Coupled chemical-reactions
A-priori pathometry
Probabilities
Endemicity