Article ID Journal Published Year Pages File Type
31768 Metabolic Engineering 2011 8 Pages PDF
Abstract

A metabolic network can be described by a set of elementary modes or pathways representing discrete metabolic states that support cell function. We have recently shown that in the most likely metabolic state the usage probability of individual elementary modes is distributed according to the Boltzmann distribution law while complying with the principle of maximum entropy production. To demonstrate that a metabolic network evolves towards such state we have carried out adaptive evolution experiments with Thermoanaerobacterium saccharolyticum operating with a reduced metabolic functionality based on a reduced set of elementary modes. In such reduced metabolic network metabolic fluxes can be conveniently computed from the measured metabolite secretion pattern. Over a time span of 300 generations the specific growth rate of the strain continuously increased together with a continuous increase in the rate of entropy production. We show that the rate of entropy production asymptotically approaches the maximum entropy production rate predicted from the state when the usage probability of individual elementary modes is distributed according to the Boltzmann distribution. Therefore, the outcome of evolution of a complex biological system can be predicted in highly quantitative terms using basic statistical mechanical principles.

► Metabolic fluxes can be computed as a weighted average of Elementary Modes (EM). ► Weights are predicted from EM reaction entropies and Boltzmann distribution law. ► Adaptive evolution experiments confirm that metabolic networks evolve towards such state.

Related Topics
Physical Sciences and Engineering Chemical Engineering Bioengineering
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