Individual-based Modelling: An Essential Tool for Microbiology
Authored by Jordi Ferrer, Clara Prats, Daniel Lopez
Date Published: 2008
DOI: 10.1007/s10867-008-9082-3
Sponsors:
European Social Fund
Platforms:
No platforms listed
Model Documentation:
ODD
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Micro-organisms play a central role in every ecosystem and in the global
biomass cycle. They are strongly involved in many fields of human
interest, from medicine to the food industry and waste control.
Nevertheless, most micro-organisms remain almost unknown, and nearly
99\% of them have not yet been successfully cultured in vitro.
Therefore, new approaches and new tools must be developed in order to
understand the collective behaviour of microbial communities in any
natural or artificial setting. In particular, theoretical and practical
methodologies to deal with such systems at a mesoscopic level of
description (covering the range from 100 to 10(8) cells) are required.
Individual-based modelling (IBM) has become a widely used tool for
describing complex systems made up of autonomous entities, such as
ecosystems and social networks. Individual-based models (IBMs) provide
some advantages over the traditional whole-population models: (a) they
are bottom-up approaches, so they describe the behaviour of a system as
a whole by establishing procedural rules for the individuals and for
their interactions, and thus allow more realistic assumptions for the
model of the individuals than population models do; (b) they permit the
introduction of randomness and individual variability, so they can
reproduce the diversity found in real systems; and (c) they can account
for individual adaptive behaviour to their environmental conditions, so
the evolution of the whole system arises from the dynamics that govern
individuals in their pursuit of optimal fitness. However, they also
present some drawbacks: they lack the clarity of continuous models and
may easily become rambling, which makes them difficult to analyse and
communicate. All in all, IBMs supply a holistic description of microbial
systems and their emerging properties. They are specifically appropriate
to deal with microbial communities in non-steady states, and spatially
explicit IBMs are particularly appropriate to study laboratory and
natural microbiological systems with spatial heterogeneity. In this
paper, we review IBM methodology applied to microbiology. We also
present some results obtained from the application of Individual
Discrete Simulations, an IBM of ours, to the study of bacterial
communities, yeast cultures and Plasmodium falciparum-infected
erythrocytes in vitro cultures of Plasmodium falciparum-infected
erythrocytes.
Tags
Computer-simulation
Escherichia-coli
Growth-rate
Exact stochastic simulation
Cell-division
Bacterial cultures
Malaria parasites
Monte-carlo simulation
Stationary-phase
Batch cultures