Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors

<p>Abstract</p> <p>The heterogeneity that soft tissue sarcomas (STS) exhibit in their clinical behavior, even within histological subtypes, complicates patient care. Histological appearance is determined by gene expression. Morphologic features are generally good predictors of biol...

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Main Authors: Skubitz Amy PN, Manivel J Carlos, Pambuccian Stefan, Skubitz Keith M
Format: Article
Language:English
Published: BMC 2008-05-01
Series:Journal of Translational Medicine
Online Access:http://www.translational-medicine.com/content/6/1/23
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spelling doaj-ab5e46a7802340039f37169c8c2306652020-11-24T23:02:49ZengBMCJournal of Translational Medicine1479-58762008-05-01612310.1186/1479-5876-6-23Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumorsSkubitz Amy PNManivel J CarlosPambuccian StefanSkubitz Keith M<p>Abstract</p> <p>The heterogeneity that soft tissue sarcomas (STS) exhibit in their clinical behavior, even within histological subtypes, complicates patient care. Histological appearance is determined by gene expression. Morphologic features are generally good predictors of biologic behavior, however, metastatic propensity, tumor growth, and response to chemotherapy may be determined by gene expression patterns that do not correlate well with morphology. One approach to identify heterogeneity is to search for genetic markers that correlate with differences in tumor behavior. Alternatively, subsets may be identified based on gene expression patterns alone, independent of knowledge of clinical outcome. We have reported gene expression patterns that distinguish two subgroups of clear cell renal carcinoma (ccRCC), and other gene expression patterns that distinguish heterogeneity of serous ovarian carcinoma (OVCA) and aggressive fibromatosis (AF). In this study, gene expression in 53 samples of STS and AF [including 16 malignant fibrous histiocytoma (MFH), 9 leiomyosarcoma, 12 liposarcoma, 4 synovial sarcoma, and 12 samples of AF] was determined at Gene Logic Inc. (Gaithersburg, MD) using Affymetrix GeneChip<sup>® </sup>U_133 arrays containing approximately 40,000 genes/ESTs. Gene expression analysis was performed with the Gene Logic Genesis Enterprise System<sup>® </sup>Software and Expressionist software. Hierarchical clustering of the STS using our three previously reported gene sets, each generated subgroups within the STS that for some subtypes correlated with histology, and also suggested the existence of subsets of MFH. All three gene sets also recognized the same two subsets of the fibromatosis samples that we had found in our earlier study of AF. These results suggest that these subgroups may have biological significance, and that these gene sets may be useful for sub-classification of STS. In addition, several genes that are targets of some anti-tumor drugs were found to be differentially expressed in particular subsets of STS.</p> http://www.translational-medicine.com/content/6/1/23
collection DOAJ
language English
format Article
sources DOAJ
author Skubitz Amy PN
Manivel J Carlos
Pambuccian Stefan
Skubitz Keith M
spellingShingle Skubitz Amy PN
Manivel J Carlos
Pambuccian Stefan
Skubitz Keith M
Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
Journal of Translational Medicine
author_facet Skubitz Amy PN
Manivel J Carlos
Pambuccian Stefan
Skubitz Keith M
author_sort Skubitz Amy PN
title Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
title_short Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
title_full Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
title_fullStr Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
title_full_unstemmed Identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
title_sort identification of heterogeneity among soft tissue sarcomas by gene expression profiles from different tumors
publisher BMC
series Journal of Translational Medicine
issn 1479-5876
publishDate 2008-05-01
description <p>Abstract</p> <p>The heterogeneity that soft tissue sarcomas (STS) exhibit in their clinical behavior, even within histological subtypes, complicates patient care. Histological appearance is determined by gene expression. Morphologic features are generally good predictors of biologic behavior, however, metastatic propensity, tumor growth, and response to chemotherapy may be determined by gene expression patterns that do not correlate well with morphology. One approach to identify heterogeneity is to search for genetic markers that correlate with differences in tumor behavior. Alternatively, subsets may be identified based on gene expression patterns alone, independent of knowledge of clinical outcome. We have reported gene expression patterns that distinguish two subgroups of clear cell renal carcinoma (ccRCC), and other gene expression patterns that distinguish heterogeneity of serous ovarian carcinoma (OVCA) and aggressive fibromatosis (AF). In this study, gene expression in 53 samples of STS and AF [including 16 malignant fibrous histiocytoma (MFH), 9 leiomyosarcoma, 12 liposarcoma, 4 synovial sarcoma, and 12 samples of AF] was determined at Gene Logic Inc. (Gaithersburg, MD) using Affymetrix GeneChip<sup>® </sup>U_133 arrays containing approximately 40,000 genes/ESTs. Gene expression analysis was performed with the Gene Logic Genesis Enterprise System<sup>® </sup>Software and Expressionist software. Hierarchical clustering of the STS using our three previously reported gene sets, each generated subgroups within the STS that for some subtypes correlated with histology, and also suggested the existence of subsets of MFH. All three gene sets also recognized the same two subsets of the fibromatosis samples that we had found in our earlier study of AF. These results suggest that these subgroups may have biological significance, and that these gene sets may be useful for sub-classification of STS. In addition, several genes that are targets of some anti-tumor drugs were found to be differentially expressed in particular subsets of STS.</p>
url http://www.translational-medicine.com/content/6/1/23
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