EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.

Epithelial to mesenchymal transition (EMT) is an important event during development and cancer metastasis. There is limited understanding of the metabolic alterations that give rise to and take place during EMT. Dysregulation of signalling pathways that impact metabolism, including epidermal growth...

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Main Authors: Kumari Sonal Choudhary, Neha Rohatgi, Skarphedinn Halldorsson, Eirikur Briem, Thorarinn Gudjonsson, Steinn Gudmundsson, Ottar Rolfsson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-06-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC4890760?pdf=render
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spelling doaj-3c9f0d064fa4467b90578c7e95b6d56c2020-11-25T01:11:55ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582016-06-01126e100492410.1371/journal.pcbi.1004924EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.Kumari Sonal ChoudharyNeha RohatgiSkarphedinn HalldorssonEirikur BriemThorarinn GudjonssonSteinn GudmundssonOttar RolfssonEpithelial to mesenchymal transition (EMT) is an important event during development and cancer metastasis. There is limited understanding of the metabolic alterations that give rise to and take place during EMT. Dysregulation of signalling pathways that impact metabolism, including epidermal growth factor receptor (EGFR), are however a hallmark of EMT and metastasis. In this study, we report the investigation into EGFR signalling and metabolic crosstalk of EMT through constraint-based modelling and analysis of the breast epithelial EMT cell model D492 and its mesenchymal counterpart D492M. We built an EGFR signalling network for EMT based on stoichiometric coefficients and constrained the network with gene expression data to build epithelial (EGFR_E) and mesenchymal (EGFR_M) networks. Metabolic alterations arising from differential expression of EGFR genes was derived from a literature review of AKT regulated metabolic genes. Signaling flux differences between EGFR_E and EGFR_M models subsequently allowed metabolism in D492 and D492M cells to be assessed. Higher flux within AKT pathway in the D492 cells compared to D492M suggested higher glycolytic activity in D492 that we confirmed experimentally through measurements of glucose uptake and lactate secretion rates. The signaling genes from the AKT, RAS/MAPK and CaM pathways were predicted to revert D492M to D492 phenotype. Follow-up analysis of EGFR signaling metabolic crosstalk in three additional breast epithelial cell lines highlighted variability in in vitro cell models of EMT. This study shows that the metabolic phenotype may be predicted by in silico analyses of gene expression data of EGFR signaling genes, but this phenomenon is cell-specific and does not follow a simple trend.http://europepmc.org/articles/PMC4890760?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Kumari Sonal Choudhary
Neha Rohatgi
Skarphedinn Halldorsson
Eirikur Briem
Thorarinn Gudjonsson
Steinn Gudmundsson
Ottar Rolfsson
spellingShingle Kumari Sonal Choudhary
Neha Rohatgi
Skarphedinn Halldorsson
Eirikur Briem
Thorarinn Gudjonsson
Steinn Gudmundsson
Ottar Rolfsson
EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
PLoS Computational Biology
author_facet Kumari Sonal Choudhary
Neha Rohatgi
Skarphedinn Halldorsson
Eirikur Briem
Thorarinn Gudjonsson
Steinn Gudmundsson
Ottar Rolfsson
author_sort Kumari Sonal Choudhary
title EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
title_short EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
title_full EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
title_fullStr EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
title_full_unstemmed EGFR Signal-Network Reconstruction Demonstrates Metabolic Crosstalk in EMT.
title_sort egfr signal-network reconstruction demonstrates metabolic crosstalk in emt.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2016-06-01
description Epithelial to mesenchymal transition (EMT) is an important event during development and cancer metastasis. There is limited understanding of the metabolic alterations that give rise to and take place during EMT. Dysregulation of signalling pathways that impact metabolism, including epidermal growth factor receptor (EGFR), are however a hallmark of EMT and metastasis. In this study, we report the investigation into EGFR signalling and metabolic crosstalk of EMT through constraint-based modelling and analysis of the breast epithelial EMT cell model D492 and its mesenchymal counterpart D492M. We built an EGFR signalling network for EMT based on stoichiometric coefficients and constrained the network with gene expression data to build epithelial (EGFR_E) and mesenchymal (EGFR_M) networks. Metabolic alterations arising from differential expression of EGFR genes was derived from a literature review of AKT regulated metabolic genes. Signaling flux differences between EGFR_E and EGFR_M models subsequently allowed metabolism in D492 and D492M cells to be assessed. Higher flux within AKT pathway in the D492 cells compared to D492M suggested higher glycolytic activity in D492 that we confirmed experimentally through measurements of glucose uptake and lactate secretion rates. The signaling genes from the AKT, RAS/MAPK and CaM pathways were predicted to revert D492M to D492 phenotype. Follow-up analysis of EGFR signaling metabolic crosstalk in three additional breast epithelial cell lines highlighted variability in in vitro cell models of EMT. This study shows that the metabolic phenotype may be predicted by in silico analyses of gene expression data of EGFR signaling genes, but this phenomenon is cell-specific and does not follow a simple trend.
url http://europepmc.org/articles/PMC4890760?pdf=render
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