iDynoMiCS: next-generation individual-based modelling of biofilms
Authored by Jan-Ulrich Kreft, Cristian Picioreanu, Laurent A Lardon, Brian V Merkey, Sonia Martins, Andreas Doetsch, Barth F Smets
Date Published: 2011
DOI: 10.1111/j.1462-2920.2011.02414.x
Sponsors:
European Union
German Research Foundation (Deutsche Forschungsgemeinschaft, DFG)
Helmholtz Association of German Research Centres (Helmholtz-Gemeinschaft Deutscher Forschungszentren HGF)
Platforms:
iDynoMiCS (standingfor individual-based Dynamics of Microbial CommunitiesSimulator)
Model Documentation:
ODD
Pseudocode
Mathematical description
Model Code URLs:
Model code not found
Abstract
Individual-based modelling of biofilms accounts for the fact that
individual organisms of the same species may well be in a different
physiological state as a result of environmental gradients, lag times in
responding to change, or noise in gene expression, which we have become
increasingly aware of with the advent of single-cell microbiology. But
progress in developing and using individual-based modelling has been
hampered by different groups writing their own code and the lack of an
available standard model. We therefore set out to merge most features of
previous models and incorporate various improvements in order to provide
a common basis for further developments. Four improvements stand out:
the biofilm pressure field allows for shrinking or consolidating
biofilms; the continuous-in-time extracellular polymeric substances
excretion leads to more realistic fluid behaviour of the extracellular
matrix, avoiding artefacts; the stochastic chemostat mode allows
comparison of spatially uniform and heterogeneous systems; and the
separation of growth kinetics from the individual cell allows
condition-dependent switching of metabolism. As an illustration of the
model's use, we used the latter feature to study how environmentally
fluctuating oxygen availability affects the diversity and composition of
a community of denitrifying bacteria that induce the denitrification
pathway under anoxic or low oxygen conditions. We tested the hypothesis
that the existence of these diverse strategies of denitrification can be
explained solely by assuming that faster response incurs higher costs.
We found that if the ability to switch metabolic pathways quickly incurs
no costs the fastest responder is always the best. However, if there is
a trade-off where faster switching incurs higher costs, then there is a
strategy with optimal response time for any frequency of environmental
fluctuations, suggesting that different types of denitrifying strategies
win in different environments. In a single environment, biodiversity of
denitrifiers is higher in biofilms than chemostats, higher with than
without costs and higher at intermediate frequency of change. The highly
modular nature of the new computational model made this case study
straightforward to implement, and reflects the sort of novel studies
that can easily be executed with the new model.
Tags
Simulation
continuum model
bacteria
growth
Denitrification
Community structure
Detachment
Membrane-aerated biofilm
Microbial biofilms
Continuous-culture