Abstract
Drugs are devised to enter into the metabolism of an organism in order to produce a desired effect. From the chemical point of view, cellular metabolism is constituted by a complex network of reactions transforming metabolites one in each other. Knowledge on the structure of this network could help to develop novel methods for drug design, and to comprehend the root of known unexpected side effects. Many large-scale studies on the structure of metabolic networks have been developed following models based on different kinds of graphs as the fundamental image of the reaction network. Graphs models, however, comport wrong assumptions regarding the structure of reaction networks that may lead into wrong conclusions if they are not taken into account. In this article we critically review some graph-theoretical approaches to the analysis of centrality, vulnerability and modularity of metabolic networks, analyzing their limitations in estimating these key network properties, consider some proposals explicit or implicitly based on directed hypergraphs regarding their ability to overcome these issues, and review some recent implementation improvements that make the application of these models in increasingly large networks a viable option.
Keywords: Metabolic networks, reaction networks, directed hypergraphs, centrality measures, vulnerability, modularity, drug design, graph models, metabolites, flux balance analysis
Current Computer-Aided Drug Design
Title: Metabolic Networks: Beyond the Graph
Volume: 7 Issue: 2
Author(s): Andres Bernal and Edgar Daza
Affiliation:
Keywords: Metabolic networks, reaction networks, directed hypergraphs, centrality measures, vulnerability, modularity, drug design, graph models, metabolites, flux balance analysis
Abstract: Drugs are devised to enter into the metabolism of an organism in order to produce a desired effect. From the chemical point of view, cellular metabolism is constituted by a complex network of reactions transforming metabolites one in each other. Knowledge on the structure of this network could help to develop novel methods for drug design, and to comprehend the root of known unexpected side effects. Many large-scale studies on the structure of metabolic networks have been developed following models based on different kinds of graphs as the fundamental image of the reaction network. Graphs models, however, comport wrong assumptions regarding the structure of reaction networks that may lead into wrong conclusions if they are not taken into account. In this article we critically review some graph-theoretical approaches to the analysis of centrality, vulnerability and modularity of metabolic networks, analyzing their limitations in estimating these key network properties, consider some proposals explicit or implicitly based on directed hypergraphs regarding their ability to overcome these issues, and review some recent implementation improvements that make the application of these models in increasingly large networks a viable option.
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Cite this article as:
Bernal Andres and Daza Edgar, Metabolic Networks: Beyond the Graph, Current Computer-Aided Drug Design 2011; 7 (2) . https://dx.doi.org/10.2174/157340911795677611
DOI https://dx.doi.org/10.2174/157340911795677611 |
Print ISSN 1573-4099 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-6697 |

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