| Literature DB >> 24597747 |
Raphael Lis, Cyril Touboul, Najeeb M Halabi, Abishek Sainath Madduri, Denis Querleu, Jason Mezey, Joel A Malek, Karsten Suhre, Arash Rafii1.
Abstract
BACKGROUND: The cross talk between the stroma and cancer cells plays a major role in phenotypic modulation. During peritoneal carcinomatosis ovarian cancer cells interact with mesenchymal stem cells (MSC) resulting in increased metastatic ability. Understanding the transcriptomic changes underlying the phenotypic modulation will allow identification of key genes to target. However in the context of personalized medicine we must consider inter and intra tumoral heterogeneity. In this study we used a pathway-based approach to illustrate the role of cell line background in transcriptomic modification during a cross talk with MSC.Entities:
Mesh:
Year: 2014 PMID: 24597747 PMCID: PMC4132214 DOI: 10.1186/1479-5876-12-59
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
Figure 1Transcriptomic differences between OVCAR3 and SKOV3 and PCA after interaction with the mesenchymal cells. A. Ingenuity pathway analysis network obtained when the differentially regulated genes genes between SKOV3 and OVCAR3 were overlaid on the gene list related to mesenchymal phenotype. Genes in green are over-expressed by at least 5 fold in SKOV3, genes in red are over-expressed in OVCAR3 (by at least 5 folds). B. PCA analysis for the ovarian cancer cells lines alone or post-contact with the Mesenchymal cells.
Most relevant networks retrieved by IPA
| | | | |
| Disease and disorders | | | |
| | Cancer | 3.77 10-21 | 167 |
| | Reproductive system disease | 5.58 10-9 | 105 |
| Physiological system development and function | | | |
| | Connective tissue development and function | 2.85 10-5 | 45 |
| | Tumor morphology | 1.03 10-4 | 49 |
| | | | |
| | Cancer | 1.9 10-12 | 88 |
| | Reproductive system disease | 1.8 10-10 | 67 |
| Molecular and cellular function | | | |
| | Cellular movement | 1.9 10-7 | 45 |
| Tissue development | 3.3 10-7 | 55 |
Lists of differentially regulated genes modified for each cell line as retrieved by IPA network analysis
| | |
| | |
| TWIST | 2.85 |
| ZEB | 2 |
| CDH1 | 2.8 |
| Hyaluronan Synthase 3 | -2.7 |
| FN1 | -5.67 |
| | |
| CEBPB | 5.3 |
| CCND2 | 5.4 |
| CDKN1C | 4.2 |
| BCL6 | 5.5 |
| RASGRP1 | 2.17 |
| CCNE2 | -3.9 |
| GMNN | -2 |
| SKP2 | -2.2 |
| SPARC | -3.8 |
| | |
| GADD45A | 8.7 |
| DDIT3 | 9.7 |
| NR3C1 | 3 |
| ATF2 | 2.65 |
| RASGRP1 | 2.1 |
| | |
| | |
| CXCR4 | 2.9 |
| FN1 | 2 |
| MMP3 | 5.8 |
| Serpine1 | 3.2 |
| PAPP-A | 7.2 |
| SPARC | 4.6 |
| CDH1 | -4.4 |
| CD24 | -2.1 |
| VAV3 | -2.9 |
| | |
| INHBA | 3.5 |
| FN1 | 2 |
| IGFBP5 | 4.3 |
| SPARC | 4.6 |
| COL1A1 | 9.8 |
| | |
| SPARC | 6.4 |
| PDGFRA | 4.5 |
| S1PR3 | 2.8 |
| KITLG | 2.2 |
| IGFBP5 | 4.4 |
| SCD | -4.2 |
| FASN | -2 |
| DDIT4 | -2.5 |
Figure 2Pathways modified in OCC upon MSC contact related to adherence, migration, and invasion. A. Ingenuity Pathway Analysis obtained from OVCAR3-eGFP following MSC contact. B. Ingenuity Pathway Analysis obtained from SKOV3-eGFP following MSC contact.
Figure 3Networks associated with increased proliferation. A. Networks involving all “proliferation” related genes in OVCAR3 upon co-culture with MSC. B. Networks involving all “proliferation” related genes in SKOV3 upon co-culture with MSC.
Figure 4Pathways modified in OCC upon MSC contact related to chemoresistance. A. Ingenuity Pathway Analysis obtained from OVCAR3 following MSC contact. B. Ingenuity Pathway Analysis obtained from SKOV3 following MSC contact.
Figure 5Correlation of OVCAR3 and SKOV3 gene expression to patient tumors. A) Histograms of the correlation coefficients, calculated between every patient gene expression profile and cell line gene expression profiles, show that OVCAR3 expression following MSC coculture is negatively correlated with patient tumor expression while SKOV3 expression following MSC coculture is positively correlated. The OVCAR3 and SKOV3 random correlation distribution as shown by the random histograms indicates that the high positive and negative correlations are not due to chance. B) Scatterplots showing the p-value variation with the correlation coefficient indicates that the high and low correlations have significantly low p-values. P-value scatterplots of the random correlations also show higher p-values than the sample correlations indicating significant sample correlations.