Cargando…

mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data

The metabolome is a highly dynamic entity and the final readout of the genotype x environment x phenotype (GxExP) relationship of an organism. Monitoring metabolite dynamics over time thus theoretically encrypts the whole range of possible chemical and biochemical transformations of small molecules...

Descripción completa

Detalles Bibliográficos
Autores principales: Doerfler, Hannes, Sun, Xiaoliang, Wang, Lei, Engelmeier, Doris, Lyon, David, Weckwerth, Wolfram
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4028198/
https://www.ncbi.nlm.nih.gov/pubmed/24846183
http://dx.doi.org/10.1371/journal.pone.0096188
_version_ 1782317042138873856
author Doerfler, Hannes
Sun, Xiaoliang
Wang, Lei
Engelmeier, Doris
Lyon, David
Weckwerth, Wolfram
author_facet Doerfler, Hannes
Sun, Xiaoliang
Wang, Lei
Engelmeier, Doris
Lyon, David
Weckwerth, Wolfram
author_sort Doerfler, Hannes
collection PubMed
description The metabolome is a highly dynamic entity and the final readout of the genotype x environment x phenotype (GxExP) relationship of an organism. Monitoring metabolite dynamics over time thus theoretically encrypts the whole range of possible chemical and biochemical transformations of small molecules involved in metabolism. The bottleneck is, however, the sheer number of unidentified structures in these samples. This represents the next challenge for metabolomics technology and is comparable with genome sequencing 30 years ago. At the same time it is impossible to handle the amount of data involved in a metabolomics analysis manually. Algorithms are therefore imperative to allow for automated m/z feature extraction and subsequent structure or pathway assignment. Here we provide an automated pathway inference strategy comprising measurements of metabolome time series using LC- MS with high resolution and high mass accuracy. An algorithm was developed, called mzGroupAnalyzer, to automatically explore the metabolome for the detection of metabolite transformations caused by biochemical or chemical modifications. Pathways are extracted directly from the data and putative novel structures can be identified. The detected m/z features can be mapped on a van Krevelen diagram according to their H/C and O/C ratios for pattern recognition and to visualize oxidative processes and biochemical transformations. This method was applied to Arabidopsis thaliana treated simultaneously with cold and high light. Due to a protective antioxidant response the plants turn from green to purple color via the accumulation of flavonoid structures. The detection of potential biochemical pathways resulted in 15 putatively new compounds involved in the flavonoid-pathway. These compounds were further validated by product ion spectra from the same data. The mzGroupAnalyzer is implemented in the graphical user interface (GUI) of the metabolomics toolbox COVAIN (Sun & Weckwerth, 2012, Metabolomics 8: 81–93). The strategy can be extended to any biological system.
format Online
Article
Text
id pubmed-4028198
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-40281982014-05-21 mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data Doerfler, Hannes Sun, Xiaoliang Wang, Lei Engelmeier, Doris Lyon, David Weckwerth, Wolfram PLoS One Research Article The metabolome is a highly dynamic entity and the final readout of the genotype x environment x phenotype (GxExP) relationship of an organism. Monitoring metabolite dynamics over time thus theoretically encrypts the whole range of possible chemical and biochemical transformations of small molecules involved in metabolism. The bottleneck is, however, the sheer number of unidentified structures in these samples. This represents the next challenge for metabolomics technology and is comparable with genome sequencing 30 years ago. At the same time it is impossible to handle the amount of data involved in a metabolomics analysis manually. Algorithms are therefore imperative to allow for automated m/z feature extraction and subsequent structure or pathway assignment. Here we provide an automated pathway inference strategy comprising measurements of metabolome time series using LC- MS with high resolution and high mass accuracy. An algorithm was developed, called mzGroupAnalyzer, to automatically explore the metabolome for the detection of metabolite transformations caused by biochemical or chemical modifications. Pathways are extracted directly from the data and putative novel structures can be identified. The detected m/z features can be mapped on a van Krevelen diagram according to their H/C and O/C ratios for pattern recognition and to visualize oxidative processes and biochemical transformations. This method was applied to Arabidopsis thaliana treated simultaneously with cold and high light. Due to a protective antioxidant response the plants turn from green to purple color via the accumulation of flavonoid structures. The detection of potential biochemical pathways resulted in 15 putatively new compounds involved in the flavonoid-pathway. These compounds were further validated by product ion spectra from the same data. The mzGroupAnalyzer is implemented in the graphical user interface (GUI) of the metabolomics toolbox COVAIN (Sun & Weckwerth, 2012, Metabolomics 8: 81–93). The strategy can be extended to any biological system. Public Library of Science 2014-05-20 /pmc/articles/PMC4028198/ /pubmed/24846183 http://dx.doi.org/10.1371/journal.pone.0096188 Text en © 2014 Weckwerth et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Doerfler, Hannes
Sun, Xiaoliang
Wang, Lei
Engelmeier, Doris
Lyon, David
Weckwerth, Wolfram
mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title_full mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title_fullStr mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title_full_unstemmed mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title_short mzGroupAnalyzer-Predicting Pathways and Novel Chemical Structures from Untargeted High-Throughput Metabolomics Data
title_sort mzgroupanalyzer-predicting pathways and novel chemical structures from untargeted high-throughput metabolomics data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4028198/
https://www.ncbi.nlm.nih.gov/pubmed/24846183
http://dx.doi.org/10.1371/journal.pone.0096188
work_keys_str_mv AT doerflerhannes mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata
AT sunxiaoliang mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata
AT wanglei mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata
AT engelmeierdoris mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata
AT lyondavid mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata
AT weckwerthwolfram mzgroupanalyzerpredictingpathwaysandnovelchemicalstructuresfromuntargetedhighthroughputmetabolomicsdata