Computational Tools for the Secondary Analysis of Metabolomics Experiments
Metabolomics experiments have become commonplace in a wide variety of disciplines. By identifying and quantifying metabolites researchers can achieve a systems level understanding of metabolism. These studies produce vast swaths of data which are often only lightly interpreted due to the overwhelmin...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Elsevier
2013-01-01
|
Series: | Computational and Structural Biotechnology Journal |
Subjects: | |
Online Access: | http://journals.sfu.ca/rncsb/index.php/csbj/article/view/csbj.201301003 |
id |
doaj-fb7533a6e3284b5d9863521d7c9ec3dc |
---|---|
record_format |
Article |
spelling |
doaj-fb7533a6e3284b5d9863521d7c9ec3dc2020-11-24T23:08:38ZengElsevierComputational and Structural Biotechnology Journal2001-03702013-01-0145e201301003Computational Tools for the Secondary Analysis of Metabolomics ExperimentsSean Cameron BoothAalim WeljieRaymond Joseph TurnerMetabolomics experiments have become commonplace in a wide variety of disciplines. By identifying and quantifying metabolites researchers can achieve a systems level understanding of metabolism. These studies produce vast swaths of data which are often only lightly interpreted due to the overwhelmingly large amount of variables that are measured. Recently, a number of computational tools have been developed which enable much deeper analysis of metabolomics data. These data have been difficult to interpret as understanding the connections between dozens of altered metabolites has often relied on the biochemical knowledge of researchers and their speculations. Modern biochemical databases provide information about the interconnectivity of metabolism which can be automatically polled using metabolomics secondary analysis tools. Starting with lists of altered metabolites, there are two main types of analysis: enrichment analysis computes which metabolic pathways have been significantly altered whereas metabolite mapping contextualizes the abundances and significances of measured metabolites into network visualizations. Many different tools have been developed for one or both of these applications. In this review the functionality and use of these software is discussed. Together these novel secondary analysis tools will enable metabolomics researchers to plumb the depths of their data and produce farther reaching biological conclusions than ever before.http://journals.sfu.ca/rncsb/index.php/csbj/article/view/csbj.201301003Metabolomicssystems biologyfunctional genomicscomputational analysissoftware toolsmetabolite enrichment |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sean Cameron Booth Aalim Weljie Raymond Joseph Turner |
spellingShingle |
Sean Cameron Booth Aalim Weljie Raymond Joseph Turner Computational Tools for the Secondary Analysis of Metabolomics Experiments Computational and Structural Biotechnology Journal Metabolomics systems biology functional genomics computational analysis software tools metabolite enrichment |
author_facet |
Sean Cameron Booth Aalim Weljie Raymond Joseph Turner |
author_sort |
Sean Cameron Booth |
title |
Computational Tools for the Secondary Analysis of Metabolomics Experiments |
title_short |
Computational Tools for the Secondary Analysis of Metabolomics Experiments |
title_full |
Computational Tools for the Secondary Analysis of Metabolomics Experiments |
title_fullStr |
Computational Tools for the Secondary Analysis of Metabolomics Experiments |
title_full_unstemmed |
Computational Tools for the Secondary Analysis of Metabolomics Experiments |
title_sort |
computational tools for the secondary analysis of metabolomics experiments |
publisher |
Elsevier |
series |
Computational and Structural Biotechnology Journal |
issn |
2001-0370 |
publishDate |
2013-01-01 |
description |
Metabolomics experiments have become commonplace in a wide variety of disciplines. By identifying and quantifying metabolites researchers can achieve a systems level understanding of metabolism. These studies produce vast swaths of data which are often only lightly interpreted due to the overwhelmingly large amount of variables that are measured. Recently, a number of computational tools have been developed which enable much deeper analysis of metabolomics data. These data have been difficult to interpret as understanding the connections between dozens of altered metabolites has often relied on the biochemical knowledge of researchers and their speculations. Modern biochemical databases provide information about the interconnectivity of metabolism which can be automatically polled using metabolomics secondary analysis tools. Starting with lists of altered metabolites, there are two main types of analysis: enrichment analysis computes which metabolic pathways have been significantly altered whereas metabolite mapping contextualizes the abundances and significances of measured metabolites into network visualizations. Many different tools have been developed for one or both of these applications. In this review the functionality and use of these software is discussed. Together these novel secondary analysis tools will enable metabolomics researchers to plumb the depths of their data and produce farther reaching biological conclusions than ever before. |
topic |
Metabolomics systems biology functional genomics computational analysis software tools metabolite enrichment |
url |
http://journals.sfu.ca/rncsb/index.php/csbj/article/view/csbj.201301003 |
work_keys_str_mv |
AT seancameronbooth computationaltoolsforthesecondaryanalysisofmetabolomicsexperiments AT aalimweljie computationaltoolsforthesecondaryanalysisofmetabolomicsexperiments AT raymondjosephturner computationaltoolsforthesecondaryanalysisofmetabolomicsexperiments |
_version_ |
1725613164198887424 |