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

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...

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Main Authors: Nicoletta Cocco, Mercè Llabrés, Mariana Reyes-Prieto, Marta Simeoni
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0246962
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spelling doaj-70f792f167af4687b2ea44b2f2912f552021-08-06T04:30:55ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01162e024696210.1371/journal.pone.0246962MetNet: A two-level approach to reconstructing and comparing metabolic networks.Nicoletta CoccoMercè LlabrésMariana Reyes-PrietoMarta SimeoniMetabolic 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.https://doi.org/10.1371/journal.pone.0246962
collection DOAJ
language English
format Article
sources DOAJ
author Nicoletta Cocco
Mercè Llabrés
Mariana Reyes-Prieto
Marta Simeoni
spellingShingle Nicoletta Cocco
Mercè Llabrés
Mariana Reyes-Prieto
Marta Simeoni
MetNet: A two-level approach to reconstructing and comparing metabolic networks.
PLoS ONE
author_facet Nicoletta Cocco
Mercè Llabrés
Mariana Reyes-Prieto
Marta Simeoni
author_sort Nicoletta Cocco
title MetNet: A two-level approach to reconstructing and comparing metabolic networks.
title_short MetNet: A two-level approach to reconstructing and comparing metabolic networks.
title_full MetNet: A two-level approach to reconstructing and comparing metabolic networks.
title_fullStr MetNet: A two-level approach to reconstructing and comparing metabolic networks.
title_full_unstemmed MetNet: A two-level approach to reconstructing and comparing metabolic networks.
title_sort metnet: a two-level approach to reconstructing and comparing metabolic networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description 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.
url https://doi.org/10.1371/journal.pone.0246962
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AT marianareyesprieto metnetatwolevelapproachtoreconstructingandcomparingmetabolicnetworks
AT martasimeoni metnetatwolevelapproachtoreconstructingandcomparingmetabolicnetworks
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