Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer

Abstract Background Metabolomics has a great potential in the development of new biomarkers in cancer and it has experiment recent technical advances. Methods In this study, metabolomics and gene expression data from 67 localized (stage I to IIIB) breast cancer tumor samples were analyzed, using (1)...

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Main Authors: Lucía Trilla-Fuertes, Angelo Gámez-Pozo, Elena López-Camacho, Guillermo Prado-Vázquez, Andrea Zapater-Moros, Rocío López-Vacas, Jorge M. Arevalillo, Mariana Díaz-Almirón, Hilario Navarro, Paloma Maín, Enrique Espinosa, Pilar Zamora, Juan Ángel Fresno Vara
Format: Article
Language:English
Published: BMC 2020-04-01
Series:BMC Cancer
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12885-020-06764-x
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spelling doaj-b0992cc46a1c43dca0e68fab2cd0fd3e2020-11-25T02:22:44ZengBMCBMC Cancer1471-24072020-04-0120111110.1186/s12885-020-06764-xComputational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancerLucía Trilla-Fuertes0Angelo Gámez-Pozo1Elena López-Camacho2Guillermo Prado-Vázquez3Andrea Zapater-Moros4Rocío López-Vacas5Jorge M. Arevalillo6Mariana Díaz-Almirón7Hilario Navarro8Paloma Maín9Enrique Espinosa10Pilar Zamora11Juan Ángel Fresno Vara12Biomedica Molecular Medicine SLBiomedica Molecular Medicine SLMolecular Oncology & Pathology Lab, Institute of Medical and Molecular Genetics-INGEMM, La Paz University Hospital-IdiPAZBiomedica Molecular Medicine SLBiomedica Molecular Medicine SLMolecular Oncology & Pathology Lab, Institute of Medical and Molecular Genetics-INGEMM, La Paz University Hospital-IdiPAZDepartment of Statistics, Operational Research and Numerical Analysis, National University of Distance Education (UNED)Biostatistics Unit, La Paz University Hospital-IdiPAZDepartment of Statistics, Operational Research and Numerical Analysis, National University of Distance Education (UNED)Department of Statistics and Operations Research, Faculty of Mathematics, Complutense University of MadridMedical Oncology Service, La Paz University Hospital-IdiPAZMedical Oncology Service, La Paz University Hospital-IdiPAZMolecular Oncology & Pathology Lab, Institute of Medical and Molecular Genetics-INGEMM, La Paz University Hospital-IdiPAZAbstract Background Metabolomics has a great potential in the development of new biomarkers in cancer and it has experiment recent technical advances. Methods In this study, metabolomics and gene expression data from 67 localized (stage I to IIIB) breast cancer tumor samples were analyzed, using (1) probabilistic graphical models to define associations using quantitative data without other a priori information; and (2) Flux Balance Analysis and flux activities to characterize differences in metabolic pathways. Results On the one hand, both analyses highlighted the importance of glutamine in breast cancer. Moreover, cell experiments showed that treating breast cancer cells with drugs targeting glutamine metabolism significantly affects cell viability. On the other hand, these computational methods suggested some hypotheses and have demonstrated their utility in the analysis of metabolomics data and in associating metabolomics with patient’s clinical outcome. Conclusions Computational analyses applied to metabolomics data suggested that glutamine metabolism is a relevant process in breast cancer. Cell experiments confirmed this hypothesis. In addition, these computational analyses allow associating metabolomics data with patient prognosis.http://link.springer.com/article/10.1186/s12885-020-06764-xBreast cancerMetabolomicsGlutamine metabolismComputational analyses
collection DOAJ
language English
format Article
sources DOAJ
author Lucía Trilla-Fuertes
Angelo Gámez-Pozo
Elena López-Camacho
Guillermo Prado-Vázquez
Andrea Zapater-Moros
Rocío López-Vacas
Jorge M. Arevalillo
Mariana Díaz-Almirón
Hilario Navarro
Paloma Maín
Enrique Espinosa
Pilar Zamora
Juan Ángel Fresno Vara
spellingShingle Lucía Trilla-Fuertes
Angelo Gámez-Pozo
Elena López-Camacho
Guillermo Prado-Vázquez
Andrea Zapater-Moros
Rocío López-Vacas
Jorge M. Arevalillo
Mariana Díaz-Almirón
Hilario Navarro
Paloma Maín
Enrique Espinosa
Pilar Zamora
Juan Ángel Fresno Vara
Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
BMC Cancer
Breast cancer
Metabolomics
Glutamine metabolism
Computational analyses
author_facet Lucía Trilla-Fuertes
Angelo Gámez-Pozo
Elena López-Camacho
Guillermo Prado-Vázquez
Andrea Zapater-Moros
Rocío López-Vacas
Jorge M. Arevalillo
Mariana Díaz-Almirón
Hilario Navarro
Paloma Maín
Enrique Espinosa
Pilar Zamora
Juan Ángel Fresno Vara
author_sort Lucía Trilla-Fuertes
title Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
title_short Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
title_full Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
title_fullStr Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
title_full_unstemmed Computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
title_sort computational models applied to metabolomics data hints at the relevance of glutamine metabolism in breast cancer
publisher BMC
series BMC Cancer
issn 1471-2407
publishDate 2020-04-01
description Abstract Background Metabolomics has a great potential in the development of new biomarkers in cancer and it has experiment recent technical advances. Methods In this study, metabolomics and gene expression data from 67 localized (stage I to IIIB) breast cancer tumor samples were analyzed, using (1) probabilistic graphical models to define associations using quantitative data without other a priori information; and (2) Flux Balance Analysis and flux activities to characterize differences in metabolic pathways. Results On the one hand, both analyses highlighted the importance of glutamine in breast cancer. Moreover, cell experiments showed that treating breast cancer cells with drugs targeting glutamine metabolism significantly affects cell viability. On the other hand, these computational methods suggested some hypotheses and have demonstrated their utility in the analysis of metabolomics data and in associating metabolomics with patient’s clinical outcome. Conclusions Computational analyses applied to metabolomics data suggested that glutamine metabolism is a relevant process in breast cancer. Cell experiments confirmed this hypothesis. In addition, these computational analyses allow associating metabolomics data with patient prognosis.
topic Breast cancer
Metabolomics
Glutamine metabolism
Computational analyses
url http://link.springer.com/article/10.1186/s12885-020-06764-x
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