Cargando…

A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences

Sphingolipids are structurally diverse and their metabolic pathways highly complex, which makes it difficult to follow all of the subspecies in a biological system, even using “lipidomic” approaches. This report describes a method to use transcriptomic data to visualize and predict potential differe...

Descripción completa

Detalles Bibliográficos
Autores principales: Momin, Amin A., Park, Hyejung, Portz, Brent J., Haynes, Christopher A., Shaner, Rebecca L., Kelly, Samuel L., Jordan, I. King, Merrill, Alfred H.
Formato: Texto
Lenguaje:English
Publicado: The American Society for Biochemistry and Molecular Biology 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3090229/
https://www.ncbi.nlm.nih.gov/pubmed/21415121
http://dx.doi.org/10.1194/jlr.M010454
_version_ 1782203124692287488
author Momin, Amin A.
Park, Hyejung
Portz, Brent J.
Haynes, Christopher A.
Shaner, Rebecca L.
Kelly, Samuel L.
Jordan, I. King
Merrill, Alfred H.
author_facet Momin, Amin A.
Park, Hyejung
Portz, Brent J.
Haynes, Christopher A.
Shaner, Rebecca L.
Kelly, Samuel L.
Jordan, I. King
Merrill, Alfred H.
author_sort Momin, Amin A.
collection PubMed
description Sphingolipids are structurally diverse and their metabolic pathways highly complex, which makes it difficult to follow all of the subspecies in a biological system, even using “lipidomic” approaches. This report describes a method to use transcriptomic data to visualize and predict potential differences in sphingolipid composition, and it illustrates its use with published data for cancer cell lines and tumors. In addition, several novel sphingolipids that were predicted to differ between MDA-MB-231 and MCF7 cells based on published microarray data for these breast cancer cell lines were confirmed by mass spectrometry. For the data that we were able to find for these comparisons, there was a significant match between the gene expression data and sphingolipid composition (P < 0.001 by Fisher's exact test). Upon considering the large number of gene expression datasets produced in recent years, this simple integration of two types of “omic” technologies (“transcriptomics” to direct “sphingolipidomics”) might facilitate the discovery of useful relationships between sphingolipid metabolism and disease, such as the identification of new biomarkers.
format Text
id pubmed-3090229
institution National Center for Biotechnology Information
language English
publishDate 2011
publisher The American Society for Biochemistry and Molecular Biology
record_format MEDLINE/PubMed
spelling pubmed-30902292011-06-01 A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences Momin, Amin A. Park, Hyejung Portz, Brent J. Haynes, Christopher A. Shaner, Rebecca L. Kelly, Samuel L. Jordan, I. King Merrill, Alfred H. J Lipid Res Research Articles Sphingolipids are structurally diverse and their metabolic pathways highly complex, which makes it difficult to follow all of the subspecies in a biological system, even using “lipidomic” approaches. This report describes a method to use transcriptomic data to visualize and predict potential differences in sphingolipid composition, and it illustrates its use with published data for cancer cell lines and tumors. In addition, several novel sphingolipids that were predicted to differ between MDA-MB-231 and MCF7 cells based on published microarray data for these breast cancer cell lines were confirmed by mass spectrometry. For the data that we were able to find for these comparisons, there was a significant match between the gene expression data and sphingolipid composition (P < 0.001 by Fisher's exact test). Upon considering the large number of gene expression datasets produced in recent years, this simple integration of two types of “omic” technologies (“transcriptomics” to direct “sphingolipidomics”) might facilitate the discovery of useful relationships between sphingolipid metabolism and disease, such as the identification of new biomarkers. The American Society for Biochemistry and Molecular Biology 2011-06 /pmc/articles/PMC3090229/ /pubmed/21415121 http://dx.doi.org/10.1194/jlr.M010454 Text en Copyright ©2011 by the American Society for Biochemistry and Molecular Biology, Inc. Author's Choice—Final version full access. Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0/) applies to Author Choice Articles
spellingShingle Research Articles
Momin, Amin A.
Park, Hyejung
Portz, Brent J.
Haynes, Christopher A.
Shaner, Rebecca L.
Kelly, Samuel L.
Jordan, I. King
Merrill, Alfred H.
A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title_full A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title_fullStr A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title_full_unstemmed A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title_short A method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
title_sort method for visualization of “omic” datasets for sphingolipid metabolism to predict potentially interesting differences
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3090229/
https://www.ncbi.nlm.nih.gov/pubmed/21415121
http://dx.doi.org/10.1194/jlr.M010454
work_keys_str_mv AT mominamina amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT parkhyejung amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT portzbrentj amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT hayneschristophera amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT shanerrebeccal amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT kellysamuell amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT jordaniking amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT merrillalfredh amethodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT mominamina methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT parkhyejung methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT portzbrentj methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT hayneschristophera methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT shanerrebeccal methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT kellysamuell methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT jordaniking methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences
AT merrillalfredh methodforvisualizationofomicdatasetsforsphingolipidmetabolismtopredictpotentiallyinterestingdifferences