From network models to network responses: integration of thermodynamic and kinetic properties of yeast genome-scale metabolic networks
- PMID: 22129227
- DOI: 10.1111/j.1567-1364.2011.00771.x
From network models to network responses: integration of thermodynamic and kinetic properties of yeast genome-scale metabolic networks
Abstract
Many important problems in cell biology arise from the dense nonlinear interactions between functional modules. The importance of mathematical modelling and computer simulation in understanding cellular processes is now indisputable and widely appreciated. Genome-scale metabolic models have gained much popularity and utility in helping us to understand and test hypotheses about these complex networks. However, there are some caveats that come with the use and interpretation of different types of metabolic models, which we aim to highlight here. We discuss and illustrate how the integration of thermodynamic and kinetic properties of the yeast metabolic networks in network analyses can help in understanding and utilizing this organism more successfully in the areas of metabolic engineering, synthetic biology and disease treatment.
© 2011 Federation of European Microbiological Societies. Published by Blackwell Publishing Ltd. All rights reserved.
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