Deterministic epidemiological models at the individual level
Authored by Kieran J Sharkey
Date Published: 2008
DOI: 10.1007/s00285-008-0161-7
Sponsors:
No sponsors listed
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
In many fields of science including population dynamics, the vast state
spaces inhabited by all but the very simplest of systems can preclude a
deterministic analysis. Here, a class of approximate deterministic
models is introduced into the field of epidemiology that reduces this
state space to one that is numerically feasible. However, these reduced
state space master equations do not in general form a closed set. To
resolve this, the equations are approximated using closure
approximations. This process results in a method for constructing
deterministic differential equation models with a potentially large
scope of application including dynamic directed contact networks and
heterogeneous systems using time dependent parameters. The method is
exemplified in the case of an SIR (susceptible-infectious-removed)
epidemiological model and is numerically evaluated on a range of
networks from spatially local to random. In the context of epidemics
propagated on contact networks, this work assists in clarifying the link
between stochastic simulation and traditional population level
deterministic models.
Tags
epidemics
Evolution
Dynamics
networks
Influenza
Populations
Diseases
Spread
Statistical-mechanics
Ratio