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MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools

Metabolomics has started to embrace computational approaches for chemical interpretation of large data sets. Yet, metabolite annotation remains a key challenge. Recently, molecular networking and MS2LDA emerged as molecular mining tools that find molecular families and substructures in mass spectrom...

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Autores principales: Ernst, Madeleine, Kang, Kyo Bin, Caraballo-Rodríguez, Andrés Mauricio, Nothias, Louis-Felix, Wandy, Joe, Chen, Christopher, Wang, Mingxun, Rogers, Simon, Medema, Marnix H., Dorrestein, Pieter C., van der Hooft, Justin J.J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6680503/
https://www.ncbi.nlm.nih.gov/pubmed/31315242
http://dx.doi.org/10.3390/metabo9070144
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author Ernst, Madeleine
Kang, Kyo Bin
Caraballo-Rodríguez, Andrés Mauricio
Nothias, Louis-Felix
Wandy, Joe
Chen, Christopher
Wang, Mingxun
Rogers, Simon
Medema, Marnix H.
Dorrestein, Pieter C.
van der Hooft, Justin J.J.
author_facet Ernst, Madeleine
Kang, Kyo Bin
Caraballo-Rodríguez, Andrés Mauricio
Nothias, Louis-Felix
Wandy, Joe
Chen, Christopher
Wang, Mingxun
Rogers, Simon
Medema, Marnix H.
Dorrestein, Pieter C.
van der Hooft, Justin J.J.
author_sort Ernst, Madeleine
collection PubMed
description Metabolomics has started to embrace computational approaches for chemical interpretation of large data sets. Yet, metabolite annotation remains a key challenge. Recently, molecular networking and MS2LDA emerged as molecular mining tools that find molecular families and substructures in mass spectrometry fragmentation data. Moreover, in silico annotation tools obtain and rank candidate molecules for fragmentation spectra. Ideally, all structural information obtained and inferred from these computational tools could be combined to increase the resulting chemical insight one can obtain from a data set. However, integration is currently hampered as each tool has its own output format and efficient matching of data across these tools is lacking. Here, we introduce MolNetEnhancer, a workflow that combines the outputs from molecular networking, MS2LDA, in silico annotation tools (such as Network Annotation Propagation or DEREPLICATOR), and the automated chemical classification through ClassyFire to provide a more comprehensive chemical overview of metabolomics data whilst at the same time illuminating structural details for each fragmentation spectrum. We present examples from four plant and bacterial case studies and show how MolNetEnhancer enables the chemical annotation, visualization, and discovery of the subtle substructural diversity within molecular families. We conclude that MolNetEnhancer is a useful tool that greatly assists the metabolomics researcher in deciphering the metabolome through combination of multiple independent in silico pipelines.
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spelling pubmed-66805032019-08-09 MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools Ernst, Madeleine Kang, Kyo Bin Caraballo-Rodríguez, Andrés Mauricio Nothias, Louis-Felix Wandy, Joe Chen, Christopher Wang, Mingxun Rogers, Simon Medema, Marnix H. Dorrestein, Pieter C. van der Hooft, Justin J.J. Metabolites Article Metabolomics has started to embrace computational approaches for chemical interpretation of large data sets. Yet, metabolite annotation remains a key challenge. Recently, molecular networking and MS2LDA emerged as molecular mining tools that find molecular families and substructures in mass spectrometry fragmentation data. Moreover, in silico annotation tools obtain and rank candidate molecules for fragmentation spectra. Ideally, all structural information obtained and inferred from these computational tools could be combined to increase the resulting chemical insight one can obtain from a data set. However, integration is currently hampered as each tool has its own output format and efficient matching of data across these tools is lacking. Here, we introduce MolNetEnhancer, a workflow that combines the outputs from molecular networking, MS2LDA, in silico annotation tools (such as Network Annotation Propagation or DEREPLICATOR), and the automated chemical classification through ClassyFire to provide a more comprehensive chemical overview of metabolomics data whilst at the same time illuminating structural details for each fragmentation spectrum. We present examples from four plant and bacterial case studies and show how MolNetEnhancer enables the chemical annotation, visualization, and discovery of the subtle substructural diversity within molecular families. We conclude that MolNetEnhancer is a useful tool that greatly assists the metabolomics researcher in deciphering the metabolome through combination of multiple independent in silico pipelines. MDPI 2019-07-16 /pmc/articles/PMC6680503/ /pubmed/31315242 http://dx.doi.org/10.3390/metabo9070144 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ernst, Madeleine
Kang, Kyo Bin
Caraballo-Rodríguez, Andrés Mauricio
Nothias, Louis-Felix
Wandy, Joe
Chen, Christopher
Wang, Mingxun
Rogers, Simon
Medema, Marnix H.
Dorrestein, Pieter C.
van der Hooft, Justin J.J.
MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title_full MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title_fullStr MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title_full_unstemmed MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title_short MolNetEnhancer: Enhanced Molecular Networks by Integrating Metabolome Mining and Annotation Tools
title_sort molnetenhancer: enhanced molecular networks by integrating metabolome mining and annotation tools
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6680503/
https://www.ncbi.nlm.nih.gov/pubmed/31315242
http://dx.doi.org/10.3390/metabo9070144
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