Literature DB >> 33577575

MetNet: A two-level approach to reconstructing and comparing metabolic networks.

Nicoletta Cocco1, Mercè Llabrés2, Mariana Reyes-Prieto3,4, Marta Simeoni1,5.   

Abstract

Metabolic pathway comparison and interaction between different species can detect important information for drug engineering and medical science. In the literature, proposals for reconstructing and comparing metabolic networks present two main problems: network reconstruction requires usually human intervention to integrate information from different sources and, in metabolic comparison, the size of the networks leads to a challenging computational problem. We propose to automatically reconstruct a metabolic network on the basis of KEGG database information. Our proposal relies on a two-level representation of the huge metabolic network: the first level is graph-based and depicts pathways as nodes and relations between pathways as edges; the second level represents each metabolic pathway in terms of its reactions content. The two-level representation complies with the KEGG database, which decomposes the metabolism of all the different organisms into "reference" pathways in a standardised way. On the basis of this two-level representation, we introduce some similarity measures for both levels. They allow for both a local comparison, pathway by pathway, and a global comparison of the entire metabolism. We developed a tool, MetNet, that implements the proposed methodology. MetNet makes it possible to automatically reconstruct the metabolic network of two organisms selected in KEGG and to compare their two networks both quantitatively and visually. We validate our methodology by presenting some experiments performed with MetNet.

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Mesh:

Year:  2021        PMID: 33577575      PMCID: PMC7880445          DOI: 10.1371/journal.pone.0246962

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  34 in total

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7.  A genome-scale metabolic network alignment method within a hypergraph-based framework using a rotational tensor-vector product.

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Review 8.  Targeting the Mitochondrial Metabolic Network: A Promising Strategy in Cancer Treatment.

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9.  Data, information, knowledge and principle: back to metabolism in KEGG.

Authors:  Minoru Kanehisa; Susumu Goto; Yoko Sato; Masayuki Kawashima; Miho Furumichi; Mao Tanabe
Journal:  Nucleic Acids Res       Date:  2013-11-07       Impact factor: 16.971

10.  EC2KEGG: a command line tool for comparison of metabolic pathways.

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Journal:  Source Code Biol Med       Date:  2014-09-02
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