Individual-based modelling of adaptation in marine microbial populations using genetically defined physiological parameters
Authored by James R Clark, Stuart J Daines, Timothy M Lenton, Andrew J Watson, Hywel T P Williams
Date Published: 2011
DOI: 10.1016/j.ecolmodel.2011.10.001
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Abstract
Recent advances in genomics have led to a dramatic upwards revision of
marine microbial diversity and a greater appreciation of the important
role evolutionary dynamics play in structuring microbial communities.
This has presented a significant challenge to marine ecosystem models, which are traditionally diversity poor, and often do not include
adaptive/evolutionary processes. Here we explore the use of evolutionary
individual-based models (IBMs) as a means of addressing some of these
issues. In the IBM, we associate a digital 4genome' with each agent, which codes for the phenotypic traits of simulated organisms. Random
mutations at the point of reproduction then allow adaptation in response
to changing environmental conditions. Trade-offs between different
physiological parameters result in different growth strategies emerging
under different forcing scenarios. As an idealised test-case we consider
resource competition in a chemostat environment, and compare the
individual-based approach to a more traditional population-level model.
When run in a non-evolutionary context using a clonal population of
agents, the IBM reproduces the results of the population-level model.
With evolutionary processes enabled, optimally adapted agents are
observed to rise to prominence within the agent population. Their
physiological trait values are shown to compare well with theoretical
optimal trait combinations derived using resource competition theory. In
more variable environments, the model is also shown to capture
adaptation in response to changed environmental conditions. We conclude
that IBMs represent a useful framework for building detailed models
linking (sub-)individual-level processes to emergent ecosystem-level
behaviour in simplified 0- or 1-D representations of the environment, which should complement global marine ecosystem models of high spatial
complexity but necessarily simple process representation. (C) 2011
Elsevier B.V. All rights reserved.
Tags
Competition
ecosystems
kinetics
Phytoplankton
cell quota model
Ocean
Continuous culture
Monochrysis-lutheri droop
Plankton functional types
Nutrient-uptake