Repository: Freie Universität Berlin, Math Department

Evolution of Metabolic Networks: A Computational Framework

Flamm, Christoph and Ullrich, Alexander and Hofacker, L. Ivo and Stadler, Peter F. (2010) Evolution of Metabolic Networks: A Computational Framework. Journal of Systems Chemistry, 1 (4).

[img] PDF - Published Version
Restricted to Registered users only

997kB

Abstract

Background: The metabolic architectures of extant organisms share many key pathways such as the citric acid cycle, glycolysis, or the biosynthesis of most amino acids. Several competing hypotheses for the evolutionary mechanisms that shape metabolic networks have been discussed in the literature, each of which finds support from comparative analysis of extant genomes. Alternatively, the principles of metabolic evolution can be studied by direct computer simulation. This requires, however, an explicit implementation of all pertinent components: a universe of chemical reaction upon which the metabolism is built, an explicit representation of the enzymes that implement the metabolism, of a genetic system that encodes these enzymes, and of a fitness function that can be selected for. Results: We describe here a simulation environment that implements all these components in a simplified ways so that large-scale evolutionary studies are feasible. We employ an artificial chemistry that views chemical reactions as graph rewriting operations and utilizes a toy-version of quantum chemistry to derive thermodynamic parameters. Minimalist organisms with simple string-encoded genomes produce model ribozymes whose catalytic activity is determined by an ad hoc mapping between their secondary structure and the transition state graphs that they stabilize. Fitness is computed utilizing the ideas of metabolic flux analysis. We present an implementation of the complete system and first simulation results. Conclusions: The simulation system presented here allows coherent investigations into the evolutionary mechanisms of the first steps of metabolic evolution using a self-consistent toy universe

Item Type:Article
Subjects:Biological Sciences
Mathematical and Computer Sciences
ID Code:1117
Deposited By: BioComp Admin
Deposited On:13 Feb 2012 15:03
Last Modified:03 Mar 2017 14:41

Repository Staff Only: item control page