| Literature DB >> 17725829 |
Roland Schwarz1, Chunguang Liang, Christoph Kaleta, Mark Kühnel, Eik Hoffmann, Sergei Kuznetsov, Michael Hecker, Gareth Griffiths, Stefan Schuster, Thomas Dandekar.
Abstract
BACKGROUND: Modeling of metabolic networks includes tasks such as network assembly, network overview, calculation of metabolic fluxes and testing the robustness of the network.Entities:
Mesh:
Year: 2007 PMID: 17725829 PMCID: PMC2020486 DOI: 10.1186/1471-2105-8-313
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1The KEGG Browser module in YANAsquare. Screenshot of the KGB KEGG Browser extension to YANAsquare. For a pathway selected from the list of KEGG pathways to the left the browser shows all corresponding reactions in tabular form or as the original metabolic map.
Figure 2Metabolic network visualization using YANAsquare. Visualization of a metabolic network as a bipartite graph using YANAsquare. Metabolites are drawn as bullets where blue indicates internal (or balanced) metabolites and purple bullets depict metabolites outside system boundaries (external metabolites). Enzymes are drawn as yellow squares including the flux through the enzyme given the current set of elementary mode activities. Tooltip texts give detailed information about both enzymes and metabolites such as net reaction, reversibility and enzyme description. The widths of the arrows give a quick indication of the relative amount of flux through the reaction compared to the overall flux distribution.
Robustness analysis of three Staphylococci species
| Organism | |||
| Avg # of products | 20.64 | 20.76 | 21.35 |
| Robustness score | 85.99% | 86.51% | 92.84% |
The values show robustness differences among three Staphylococci species when glucose is supplied as the carbon source. The first row shows the average number (#) of metabolites produced, the second row is the robustness score r.