In spite of the molecular revolution in medicine over the last 20-30 years, the most accurate staging and prognostic test in breast cancer management is surgical removal of lymph node(s). However, earlier detection of breast cancer has resulted in nearly 70% of the cases presenting with no evidence of nodal disease. Furthermore, nearly 30% of those who have node-negative cancer ultimately progress to metastatic disease. Thus this relatively primitive test, albeit the best we have, is not very accurate. The underlying goal of this translational study is to replace nodal dissection with a test that is more accurate and less morbid. We propose development of a molecular expression analysis of the primary tumor that will predict recurrence better than nodal dissection. The technology is a new digital pathology device invented in our lab (called AQUA) that can measure protein expression in tissue samples with biochemical accuracy (like an ELISA assay) but also maintains the critical spatial information on which all of diagnostic pathology is based. This device will be used to select a small series (3-7) of tissue biomarkers, that when quantitatively assessed, can predict stage and metastasis better than the current surgical node-based assays. We propose 2 specific aims: 1) To use automated analysis of tissue microarrays to validate and distill the markers to obtain a set of 3-7 markers that accurately predict metastasis, and 2) To do a prospective diagnostic trial to determine if AQUA based analysis of breast biopsies using the select set of markers can accurately predict metastasis to the sentinel and/or non-sentinel nodes (primary endpoint) or predict recurrence (secondary endpoint).

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Exploratory/Developmental Grants Phase II (R33)
Project #
5R33CA110511-04
Application #
7433789
Study Section
Special Emphasis Panel (ZRG1-ONC-J (04))
Program Officer
Lively, Tracy (LUGO)
Project Start
2005-05-17
Project End
2010-04-30
Budget Start
2008-05-01
Budget End
2010-04-30
Support Year
4
Fiscal Year
2008
Total Cost
$244,944
Indirect Cost
Name
Yale University
Department
Pathology
Type
Schools of Medicine
DUNS #
043207562
City
New Haven
State
CT
Country
United States
Zip Code
06520
Yang, Jennifer; Tanaka, Yoshiaki; Seay, Montrell et al. (2017) Single cell transcriptomics reveals unanticipated features of early hematopoietic precursors. Nucleic Acids Res 45:1281-1296
Nadler, Y; Gonzalez, A M; Camp, R L et al. (2010) Growth factor receptor-bound protein-7 (Grb7) as a prognostic marker and therapeutic target in breast cancer. Ann Oncol 21:466-73
Anagnostou, Valsamo K; Welsh, Allison W; Giltnane, Jennifer M et al. (2010) Analytic variability in immunohistochemistry biomarker studies. Cancer Epidemiol Biomarkers Prev 19:982-91
Dolled-Filhart, Marisa; Gustavson, Mark; Camp, Robert L et al. (2010) Automated analysis of tissue microarrays. Methods Mol Biol 664:151-62
Neumeister, Veronique; Agarwal, Seema; Bordeaux, Jennifer et al. (2010) In situ identification of putative cancer stem cells by multiplexing ALDH1, CD44, and cytokeratin identifies breast cancer patients with poor prognosis. Am J Pathol 176:2131-8
Bordeaux, Jennifer; Welsh, Allison; Agarwal, Seema et al. (2010) Antibody validation. Biotechniques 48:197-209
Harigopal, Malini; Heymann, Jonas; Ghosh, Sriparna et al. (2009) Estrogen receptor co-activator (AIB1) protein expression by automated quantitative analysis (AQUA) in a breast cancer tissue microarray and association with patient outcome. Breast Cancer Res Treat 115:77-85
Agarwal, S; Zerillo, C; Kolmakova, J et al. (2009) Association of constitutively activated hepatocyte growth factor receptor (Met) with resistance to a dual EGFR/Her2 inhibitor in non-small-cell lung cancer cells. Br J Cancer 100:941-9
Giltnane, Jennifer M; Moeder, Christopher B; Camp, Robert L et al. (2009) Quantitative multiplexed analysis of ErbB family coexpression for primary breast cancer prognosis in a large retrospective cohort. Cancer 115:2400-9
Sullivan, C A W; Ghosh, S; Ocal, I T et al. (2009) Microvessel area using automated image analysis is reproducible and is associated with prognosis in breast cancer. Hum Pathol 40:156-65

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