Tumor classification is an essential part of the disease management process as it is used by the clinician to help guide the treatment regimen. It is known that great diversity exists within most solid tumors that have a common tissue of origin, like breast, and that there is even significant diversity in clinical behavior within what are described as morphologically similar tumors. Traditional approaches to breast tumor classification have utilized a mixture of empirical criteria including a morphological assessment, measures of the extent of disease dissemination, and a handful of statistically validated prognostic and predictive markers. There is a consensus, however, that these current methods fall short of the challenges posed by breast tumor diversity. The development of modern genomic analysis tools, in particular cDNA microarrays, allows us the opportunity to objectively and without foreknowledge, determine the expression level of thousands of genes in a single sample/tumor in a single day. We hypothesized that the phenotypic diversity of breast tumors would be accompanied by a corresponding diversity in gene expression patterns that we could capture using cDNA microarrays, and that this gene expression diversity could then be used to classify tumors into groups of clinical importance. We will approach the objective of defining new prognostic and predictive markers for breast cancer outcomes and response to therapy through the following specific aims:
Specific Aim 1 : To identify as many as possible of the biologically and clinically relevant breast tumor subtypes by assaying 150-250 more grossly dissected human breast tumors versus a """"""""common reference sample"""""""" on cDNA microarrays containing at least 20,000 genes. Several patient cohorts with both pre- and post-chemotherapy samples will be assayed. These data will be combined with our already existing data to build an extensive database of breast tumor gene expression """"""""profiles"""""""" that will used to further refine our breast tumor classifications and to search for correlations between gene expression patterns and responses to chemotherapy.
Specific Aim 2 : To further develop a protocol for the utilization of small amounts of input RNA for cDNA microarray analysis. Techniques that lower the amount of input RNA required for a microarray experiment will be pursued so that a larger and more representative sampling of breast tumors can be performed, and so that the core biopsy specimens described in SPORE Project 17 can be analyzed on microarrays.
Specific Aim 3 : Determine the global gene expression profiles of the prospective cohort of 120 breast cancer patients from UNC hospitals who will receive a neoadjuvant anthracycline-based and taxane-based chemotherapy regimen (Dr. Carey?s Project 17), and identify sets of genes that are associated with, and may be predictive of, response or resistance to specific chemotherapeutics.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Specialized Center (P50)
Project #
5P50CA058223-10
Application #
6659194
Study Section
Special Emphasis Panel (ZCA1)
Project Start
2002-09-13
Project End
2003-07-31
Budget Start
Budget End
Support Year
10
Fiscal Year
2002
Total Cost
Indirect Cost
Name
University of North Carolina Chapel Hill
Department
Type
DUNS #
078861598
City
Chapel Hill
State
NC
Country
United States
Zip Code
27599
Mundt, Filip; Rajput, Sandeep; Li, Shunqiang et al. (2018) Mass Spectrometry-Based Proteomics Reveals Potential Roles of NEK9 and MAP2K4 in Resistance to PI3K Inhibition in Triple-Negative Breast Cancers. Cancer Res 78:2732-2746
Takaku, Motoki; Grimm, Sara A; Roberts, John D et al. (2018) GATA3 zinc finger 2 mutations reprogram the breast cancer transcriptional network. Nat Commun 9:1059
Butler, Eboneé N; Bensen, Jeannette T; Chen, Mengjie et al. (2018) Prediagnostic Smoking Is Associated with Binary and Quantitative Measures of ER Protein and ESR1 mRNA Expression in Breast Tumors. Cancer Epidemiol Biomarkers Prev 27:67-74
Echavarria, Isabel; López-Tarruella, Sara; Picornell, Antoni et al. (2018) Pathological Response in a Triple-Negative Breast Cancer Cohort Treated with Neoadjuvant Carboplatin and Docetaxel According to Lehmann's Refined Classification. Clin Cancer Res 24:1845-1852
Cai, Ling; Tsai, Yi-Hsuan; Wang, Ping et al. (2018) ZFX Mediates Non-canonical Oncogenic Functions of the Androgen Receptor Splice Variant 7 in Castrate-Resistant Prostate Cancer. Mol Cell 72:341-354.e6
Bensen, Jeannette T; Graff, Mariaelisa; Young, Kristin L et al. (2018) A survey of microRNA single nucleotide polymorphisms identifies novel breast cancer susceptibility loci in a case-control, population-based study of African-American women. Breast Cancer Res 20:45
Puvanesarajah, Samantha; Nyante, Sarah J; Kuzmiak, Cherie M et al. (2018) PAM50 and Risk of Recurrence Scores for Interval Breast Cancers. Cancer Prev Res (Phila) 11:327-336
Knott, Simon R V; Wagenblast, Elvin; Khan, Showkhin et al. (2018) Asparagine bioavailability governs metastasis in a model of breast cancer. Nature 554:378-381
McRee, Autumn J; Marcom, Paul K; Moore, Dominic T et al. (2018) A Phase I Trial of the PI3K Inhibitor Buparlisib Combined With Capecitabine in Patients With Metastatic Breast Cancer. Clin Breast Cancer 18:289-297
DeBono, Nathan L; Robinson, Whitney R; Lund, Jennifer L et al. (2018) Race, Menopausal Hormone Therapy, and Invasive Breast Cancer in the Carolina Breast Cancer Study. J Womens Health (Larchmt) 27:377-386

Showing the most recent 10 out of 598 publications