The development of methods to accurately detect early pancreatic cancer and to better differentiate benign from malignant disease could greatly improve the outcomes for pancreatic cancer patients. It is known that malignant transformation of epithelial cells of the pancreas results in alterations in the carbohydrate chains of certain proteins secreted or released by these cells. Glycosylated proteins form the basis for current biomarkers for detecting pancreatic cancer and other adenocarcinomas, and refinement of these tests are predicted to enable detection of early pancreatic cancer. Our preliminary data has shown that a novel antibody-microarray technology allows the efficient detection of glycans on distinct proteins and the identification of specific glycan structures associated with pancreatic cancer. The method uses antibody microarrays to capture specific proteins from serum samples, followed by the incubation of a glycan-binding protein (such as a lectin) to quantify specific glycans on the captured proteins. Two classes of glycoproteins, mucins and carcinoembryonic-antigen-related proteins, are particularly associated with cancer, both in altered expression patterns and in altered glycan structures on the proteins. In the R21 phase, we will determine the levels of multiple specific glycans on members of those protein classes to test the hypothesis that the measurement of specific cancer-associated glycans on specific proteins, as opposed to measuring just protein or just glycan levels, will yield improved sensitivities and specificities for cancer detection. The R33 phase of the project will expand and thoroughly test the approach. The sensitivity and specificity of detecting pancreatic cancer using measurements of glycans on mucins, CEA proteins, and proteins identified in the R33 phase will be characterized in a large set of serum samples from subjects with pancreatic cancer, benign pancreatic disease, other cancers, and no disease. We expect to characterize the value of these measurements for disease diagnostics and to gain insights into the generality and frequency of specific glycan alterations on secreted proteins. Relevance to public health: The ability to more accurately diagnose cancers at earlier stages could lead to improved outcomes for many patients. This research could lead to significantly improved blood tests for the detection of cancer, as well as a powerful, generally- applicable platform for studying carbohydrate alterations on multiple proteins.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Exploratory/Developmental Grants Phase II (R33)
Project #
5R33CA122890-04
Application #
7893832
Study Section
Special Emphasis Panel (ZCA1-SRRB-9 (M1))
Program Officer
Krueger, Karl E
Project Start
2006-09-25
Project End
2012-07-31
Budget Start
2010-08-01
Budget End
2012-07-31
Support Year
4
Fiscal Year
2010
Total Cost
$277,884
Indirect Cost
Name
Van Andel Research Institute
Department
Type
DUNS #
129273160
City
Grand Rapids
State
MI
Country
United States
Zip Code
49503
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Haab, Brian B; Partyka, Katie; Cao, Zheng (2013) Using antibody arrays to measure protein abundance and glycosylation: considerations for optimal performance. Curr Protoc Protein Sci 73:Unit 27.6
Cao, Zheng; Partyka, Katie; McDonald, Mitchell et al. (2013) Modulation of glycan detection on specific glycoproteins by lectin multimerization. Anal Chem 85:1689-98
Haab, Brian B (2012) Using lectins in biomarker research: addressing the limitations of sensitivity and availability. Proteomics Clin Appl 6:346-50
Partyka, Katie; Maupin, Kevin A; Brand, Randall E et al. (2012) Diverse monoclonal antibodies against the CA 19-9 antigen show variation in binding specificity with consequences for clinical interpretation. Proteomics 12:2212-20
Partyka, Katie; McDonald, Mitchell; Maupin, Kevin A et al. (2012) Comparison of surgical and endoscopic sample collection for pancreatic cyst fluid biomarker identification. J Proteome Res 11:2904-11
Maupin, Kevin A; Liden, Daniel; Haab, Brian B (2012) The fine specificity of mannose-binding and galactose-binding lectins revealed using outlier motif analysis of glycan array data. Glycobiology 22:160-9
Yue, Tingting; Maupin, Kevin A; Fallon, Brian et al. (2011) Enhanced discrimination of malignant from benign pancreatic disease by measuring the CA 19-9 antigen on specific protein carriers. PLoS One 6:e29180
Haab, Brian B; Yue, Tingting (2011) High-throughput studies of protein glycoforms using antibody-lectin sandwich arrays. Methods Mol Biol 785:223-36
Yue, Tingting; Partyka, Katie; Maupin, Kevin A et al. (2011) Identification of blood-protein carriers of the CA 19-9 antigen and characterization of prevalence in pancreatic diseases. Proteomics 11:3665-74

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