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Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data

[Image: see text] A metabolic system is composed of inherently interconnected metabolic precursors, intermediates, and products. The analysis of untargeted metabolomics data has conventionally been performed through the use of comparative statistics or multivariate statistical analysis-based approac...

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Autores principales: Goodwin, Cody R., Sherrod, Stacy D., Marasco, Christina C., Bachmann, Brian O., Schramm-Sapyta, Nicole, Wikswo, John P., McLean, John A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2014
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4082383/
https://www.ncbi.nlm.nih.gov/pubmed/24856386
http://dx.doi.org/10.1021/ac5010794
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author Goodwin, Cody R.
Sherrod, Stacy D.
Marasco, Christina C.
Bachmann, Brian O.
Schramm-Sapyta, Nicole
Wikswo, John P.
McLean, John A.
author_facet Goodwin, Cody R.
Sherrod, Stacy D.
Marasco, Christina C.
Bachmann, Brian O.
Schramm-Sapyta, Nicole
Wikswo, John P.
McLean, John A.
author_sort Goodwin, Cody R.
collection PubMed
description [Image: see text] A metabolic system is composed of inherently interconnected metabolic precursors, intermediates, and products. The analysis of untargeted metabolomics data has conventionally been performed through the use of comparative statistics or multivariate statistical analysis-based approaches; however, each falls short in representing the related nature of metabolic perturbations. Herein, we describe a complementary method for the analysis of large metabolite inventories using a data-driven approach based upon a self-organizing map algorithm. This workflow allows for the unsupervised clustering, and subsequent prioritization of, correlated features through Gestalt comparisons of metabolic heat maps. We describe this methodology in detail, including a comparison to conventional metabolomics approaches, and demonstrate the application of this method to the analysis of the metabolic repercussions of prolonged cocaine exposure in rat sera profiles.
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spelling pubmed-40823832015-05-23 Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data Goodwin, Cody R. Sherrod, Stacy D. Marasco, Christina C. Bachmann, Brian O. Schramm-Sapyta, Nicole Wikswo, John P. McLean, John A. Anal Chem [Image: see text] A metabolic system is composed of inherently interconnected metabolic precursors, intermediates, and products. The analysis of untargeted metabolomics data has conventionally been performed through the use of comparative statistics or multivariate statistical analysis-based approaches; however, each falls short in representing the related nature of metabolic perturbations. Herein, we describe a complementary method for the analysis of large metabolite inventories using a data-driven approach based upon a self-organizing map algorithm. This workflow allows for the unsupervised clustering, and subsequent prioritization of, correlated features through Gestalt comparisons of metabolic heat maps. We describe this methodology in detail, including a comparison to conventional metabolomics approaches, and demonstrate the application of this method to the analysis of the metabolic repercussions of prolonged cocaine exposure in rat sera profiles. American Chemical Society 2014-05-23 2014-07-01 /pmc/articles/PMC4082383/ /pubmed/24856386 http://dx.doi.org/10.1021/ac5010794 Text en Copyright © 2014 American Chemical Society Terms of Use (http://pubs.acs.org/page/policy/authorchoice_termsofuse.html)
spellingShingle Goodwin, Cody R.
Sherrod, Stacy D.
Marasco, Christina C.
Bachmann, Brian O.
Schramm-Sapyta, Nicole
Wikswo, John P.
McLean, John A.
Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title_full Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title_fullStr Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title_full_unstemmed Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title_short Phenotypic Mapping of Metabolic Profiles Using Self-Organizing Maps of High-Dimensional Mass Spectrometry Data
title_sort phenotypic mapping of metabolic profiles using self-organizing maps of high-dimensional mass spectrometry data
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4082383/
https://www.ncbi.nlm.nih.gov/pubmed/24856386
http://dx.doi.org/10.1021/ac5010794
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