Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells.
One of the main objectives in systems biology is to understand the biological mechanisms that give rise to the phenotype of a microorganism by using high-throughput technologies and genome-scale mathematical modeling. The computational modeling of genome-scale metabolic reconstructions is one system...
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doaj-1830fce250f34d188f4e6795e9d3c66d2020-11-24T23:57:24ZengFrontiers Media S.A.Frontiers in Physiology1664-042X2013-01-01310.3389/fphys.2012.0048132982Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells.Claudia Erika Hernández Patiño0Gustavo eJaime-Muñoz1Osbaldo eResendis-Antonio2Undergraduate program of Genomic Sciences-UNAMPrograma Doctorado en Ciencias Biomedicas, Universidad Nacional Autonoma de MexicoInstituto Nacional de Medicina Genomica (INMEGEN)One of the main objectives in systems biology is to understand the biological mechanisms that give rise to the phenotype of a microorganism by using high-throughput technologies and genome-scale mathematical modeling. The computational modeling of genome-scale metabolic reconstructions is one systemic and quantitative strategy for characterizing the metabolic phenotype associated with human diseases and potentially for designing drugs with optimal clinical effects. The purpose of this short review is to describe how computational modeling, including the specific case of constraint-based modeling, can be used to explore, characterize and predict the metabolic capacities that distinguish the metabolic phenotype of cancer cell lines. As we show herein, this computational framework is far from a pure theoretical description, and to ensure proper biological interpretation, it is necessary to integrate high-throughput data and generate predictions for later experimental assessment. Hence, genome-scale modeling serves as a platform for the following: 1) the integration of data from high-throughput technologies, 2) the assessment of how metabolic activity is related to phenotype in cancer cell lines and 3) the design of new experiments to evaluate the outcomes of the in silico analysis. By combining the functions described above, we show that computational modeling is a useful methodology to construct an integrative, systemic and quantitative scheme for understanding the metabolic profiles of cancer cell lines, a first step to determine the metabolic mechanism by which cancer cells maintain and support their malignant phenotype in human tissues.http://journal.frontiersin.org/Journal/10.3389/fphys.2012.00481/fullgenome scale metabolic reconstructionhigh throughput biologyComputational Modeling of metabolismCancer Metabolic phenotypeConstraint-based modeling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Claudia Erika Hernández Patiño Gustavo eJaime-Muñoz Osbaldo eResendis-Antonio |
spellingShingle |
Claudia Erika Hernández Patiño Gustavo eJaime-Muñoz Osbaldo eResendis-Antonio Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. Frontiers in Physiology genome scale metabolic reconstruction high throughput biology Computational Modeling of metabolism Cancer Metabolic phenotype Constraint-based modeling |
author_facet |
Claudia Erika Hernández Patiño Gustavo eJaime-Muñoz Osbaldo eResendis-Antonio |
author_sort |
Claudia Erika Hernández Patiño |
title |
Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. |
title_short |
Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. |
title_full |
Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. |
title_fullStr |
Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. |
title_full_unstemmed |
Systems Biology of cancer: Moving toward the Integrative Study of the metabolic alterations in cancer cells. |
title_sort |
systems biology of cancer: moving toward the integrative study of the metabolic alterations in cancer cells. |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Physiology |
issn |
1664-042X |
publishDate |
2013-01-01 |
description |
One of the main objectives in systems biology is to understand the biological mechanisms that give rise to the phenotype of a microorganism by using high-throughput technologies and genome-scale mathematical modeling. The computational modeling of genome-scale metabolic reconstructions is one systemic and quantitative strategy for characterizing the metabolic phenotype associated with human diseases and potentially for designing drugs with optimal clinical effects. The purpose of this short review is to describe how computational modeling, including the specific case of constraint-based modeling, can be used to explore, characterize and predict the metabolic capacities that distinguish the metabolic phenotype of cancer cell lines. As we show herein, this computational framework is far from a pure theoretical description, and to ensure proper biological interpretation, it is necessary to integrate high-throughput data and generate predictions for later experimental assessment. Hence, genome-scale modeling serves as a platform for the following: 1) the integration of data from high-throughput technologies, 2) the assessment of how metabolic activity is related to phenotype in cancer cell lines and 3) the design of new experiments to evaluate the outcomes of the in silico analysis. By combining the functions described above, we show that computational modeling is a useful methodology to construct an integrative, systemic and quantitative scheme for understanding the metabolic profiles of cancer cell lines, a first step to determine the metabolic mechanism by which cancer cells maintain and support their malignant phenotype in human tissues. |
topic |
genome scale metabolic reconstruction high throughput biology Computational Modeling of metabolism Cancer Metabolic phenotype Constraint-based modeling |
url |
http://journal.frontiersin.org/Journal/10.3389/fphys.2012.00481/full |
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