Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Abstract P4-08-12: Gene Expression Profiling of Formalin-Fixed, Paraffin-Embedded (FFPE) Breast Cancer Samples and Analysis of Intrinsic Subtypes

View through CrossRef
Abstract Background: The advent of microarray technology has enabled robust, high throughput analysis of breast cancer (BC) transcriptomes. Indeed, molecular classification of BC has been revolutionized by the advent of Gene Expression Profiling (GEP). FFPE tumor samples have presented a technical challenge for GEP studies due to degradation of extracted RNA. Newer technologies have overcome this challenge, and have lead to generation of quality GEP data and thus, new insights using archived tissues. Of particular interest to our group has been application of these techniques to the study of triple negative breast cancer (TNBC). TNBC is a BC sub-type characterized by a lack of erbB2 gene amplification and estrogen and progesterone receptor expression. This clinically-defined BC sub-type carries a poor prognosis, is insensitive to hormonal or HER-2 targeted therapies, and displays different incidences among ethnic groups. A better understanding of the genetic and molecular mechanisms underlying TNBC is critical to improving clinic outcomes and developing tailorized therapies. Study Objective: We demonstrate utility of FFPE BC samples in obtaining consistent, reproducible GEP data, and apply this technology to validate the ability to identify intrinsic BC subtypes in unselected specimens, as well to identify differentially expressed genes in TNBC. Methods: RNA isolation and labelled cDNA preparation were performed from freshly cut FFPE sections. Samples were hybridized to a breast cancer focused gene expression array (Breast Cancer DSA Research Tool, Almac Diagnostics Inc). DSA chip quality was assessed on parameters selected automatically from GCOS report files per chip using MATLAB script based web application developed by Almac. Data pre-processing used the Resolver Error Model. All parameters including Raw Q, Background, Scaling Factor and all controls met quality criteria set by Affymetrix and Almac Dx SOPs. Hybridization results were assessed with Principal Component Analysis and Cluster Analysis in a Rosetta Resolver Gene Expression Data Analysis System to identify potential outliers, contamination, or intra-tumor heterogeneity. In total, 47 FFPE breast cancer samples covering a range of hormonal receptor status and sub-types were profiled, as were 28 TNBC FFPE tumor samples. Results: Cluster analysis demonstrated that the Almac Breast Cancer DSA was able to clearly separate the 47 tumor samples of the mixed subtype group into the previously described intrinsic subgroups. Moreover, the DSA array contains 167 probesets which correspond to the 40 of the PAM-50 gene set used as a subtype predictor (Parker et al 2009). Analysis of the TNBC samples using the 167 probeset (based on mean intensity for probes representing each of the 40 genes) showed 100% consistency with published results demonstrating a basal-like gene expression signature. Summary: We have shown that our study methodology used can reliably measure gene expression in FFPE BC samples, and that the Breast Cancer DSA can be used to evaluate intrinsic subtypes of BC specimens. Analysis of the TNBC cases showed complete concordance between the PAM-50 gene set and the corresponding genes in the DSA. These study results are being validated in a larger data set. Citation Information: Cancer Res 2010;70(24 Suppl):Abstract nr P4-08-12.
Title: Abstract P4-08-12: Gene Expression Profiling of Formalin-Fixed, Paraffin-Embedded (FFPE) Breast Cancer Samples and Analysis of Intrinsic Subtypes
Description:
Abstract Background: The advent of microarray technology has enabled robust, high throughput analysis of breast cancer (BC) transcriptomes.
Indeed, molecular classification of BC has been revolutionized by the advent of Gene Expression Profiling (GEP).
FFPE tumor samples have presented a technical challenge for GEP studies due to degradation of extracted RNA.
Newer technologies have overcome this challenge, and have lead to generation of quality GEP data and thus, new insights using archived tissues.
Of particular interest to our group has been application of these techniques to the study of triple negative breast cancer (TNBC).
TNBC is a BC sub-type characterized by a lack of erbB2 gene amplification and estrogen and progesterone receptor expression.
This clinically-defined BC sub-type carries a poor prognosis, is insensitive to hormonal or HER-2 targeted therapies, and displays different incidences among ethnic groups.
A better understanding of the genetic and molecular mechanisms underlying TNBC is critical to improving clinic outcomes and developing tailorized therapies.
Study Objective: We demonstrate utility of FFPE BC samples in obtaining consistent, reproducible GEP data, and apply this technology to validate the ability to identify intrinsic BC subtypes in unselected specimens, as well to identify differentially expressed genes in TNBC.
Methods: RNA isolation and labelled cDNA preparation were performed from freshly cut FFPE sections.
Samples were hybridized to a breast cancer focused gene expression array (Breast Cancer DSA Research Tool, Almac Diagnostics Inc).
DSA chip quality was assessed on parameters selected automatically from GCOS report files per chip using MATLAB script based web application developed by Almac.
Data pre-processing used the Resolver Error Model.
All parameters including Raw Q, Background, Scaling Factor and all controls met quality criteria set by Affymetrix and Almac Dx SOPs.
Hybridization results were assessed with Principal Component Analysis and Cluster Analysis in a Rosetta Resolver Gene Expression Data Analysis System to identify potential outliers, contamination, or intra-tumor heterogeneity.
In total, 47 FFPE breast cancer samples covering a range of hormonal receptor status and sub-types were profiled, as were 28 TNBC FFPE tumor samples.
Results: Cluster analysis demonstrated that the Almac Breast Cancer DSA was able to clearly separate the 47 tumor samples of the mixed subtype group into the previously described intrinsic subgroups.
Moreover, the DSA array contains 167 probesets which correspond to the 40 of the PAM-50 gene set used as a subtype predictor (Parker et al 2009).
Analysis of the TNBC samples using the 167 probeset (based on mean intensity for probes representing each of the 40 genes) showed 100% consistency with published results demonstrating a basal-like gene expression signature.
Summary: We have shown that our study methodology used can reliably measure gene expression in FFPE BC samples, and that the Breast Cancer DSA can be used to evaluate intrinsic subtypes of BC specimens.
Analysis of the TNBC cases showed complete concordance between the PAM-50 gene set and the corresponding genes in the DSA.
These study results are being validated in a larger data set.
Citation Information: Cancer Res 2010;70(24 Suppl):Abstract nr P4-08-12.

Related Results

Desmoid-Type Fibromatosis of The Breast: A Case Series
Desmoid-Type Fibromatosis of The Breast: A Case Series
Abstract IntroductionDesmoid-type fibromatosis (DTF), also called aggressive fibromatosis, is a rare, benign, locally aggressive condition. Mammary DTF originates from fibroblasts ...
Breast Carcinoma within Fibroadenoma: A Systematic Review
Breast Carcinoma within Fibroadenoma: A Systematic Review
Abstract Introduction Fibroadenoma is the most common benign breast lesion; however, it carries a potential risk of malignant transformation. This systematic review provides an ove...
Abstract 2323: Deciphering RNA degradation: Insights from a comparative analysis of paired fresh frozen/FFPE total RNA-seq
Abstract 2323: Deciphering RNA degradation: Insights from a comparative analysis of paired fresh frozen/FFPE total RNA-seq
Abstract Background: Fresh frozen (FF) and formalin-fixed paraffin-embedded (FFPE) samples are primary resources for archival tissues in cancer studies. Despite the ...
Abstract 1836: Global gene expression profiles from bladder tumor FFPE samples
Abstract 1836: Global gene expression profiles from bladder tumor FFPE samples
Abstract Cancer is a disease characterized by uncontrolled cell growth and proliferation. Recent advances in molecular medicine and cancer biology have changed the w...
Abstract B8: Molecular subtyping of epithelial ovarian cancer reveals connections to intrinsic breast cancer subtypes
Abstract B8: Molecular subtyping of epithelial ovarian cancer reveals connections to intrinsic breast cancer subtypes
Abstract Aim: Epithelial ovarian cancer is one of the most lethal female cancers. It is a heterogeneous group of neoplasms and the different histologic subtypes are ...
Abstract OI-1: OI-1 Decoding breast cancer predisposition genes
Abstract OI-1: OI-1 Decoding breast cancer predisposition genes
Abstract Women with one or more first-degree female relatives with a history of breast cancer have a two-fold increased risk of developing breast cancer. This risk i...
Abstract 1427: Comprehensive investigation of false mutation discoveries in FFPE samples
Abstract 1427: Comprehensive investigation of false mutation discoveries in FFPE samples
Abstract Next generation sequencing (NGS) has emerged as a primary tool for “precision” medicine, especially in the rapidly evolving field of cancer care. However NG...
Abstract P6-16-03: Intrinsic subtypes and MRI patterns in brain metastasis associated with breast cancer
Abstract P6-16-03: Intrinsic subtypes and MRI patterns in brain metastasis associated with breast cancer
Abstract Background: Breast cancer is the 2nd most common cancer to metastasize to the brain. The development of brain metastasis (BM) is associated with a lower med...

Back to Top