Abstract A13: Applied the proteomics characteristics to detect the inherited colorectal adenomas

2012 
Introduction: Current study found that about one-third of the incidence of colorectal cancer have genetic related. Hereditary nonpolyposis colorectal cancer (HNPCC) and familial adenomatous polyposis (FAP) is the most common hereditary colorectal cancer type, each account 5% of the total colorectal cancers and about 1%. But addition to the two and several other more rare hereditary colorectal cancer, 20-25% of colorectal cancer have a clear cancer family history. The causal relationship of this genetic susceptibility population is not yet clear, but the diagnostic and intervention of this genetic susceptibility population is very important. High risk of genetic susceptibility screening, early detection, and early intervention, blocking susceptibility factor in colorectal cancer especially in colorectal adenoma, is an important way to improve the overall level of diagnosis and treatment. By comparing the proteomic difference of the patients with family history colorectal adenomas and no family history sporadic colorectal adenomas, we aim to find new markers to screen high-risk genetic susceptible populations, as a complement to the clinical diagnostic criteria of dependence on family history. Materials and Methods: A total of 90 serum samples were analyzed in this study, including 30 patients with family history colorectal adenomas, 30 no family history sporadic colorectal adenomas, and 30 healthy individuals. All samples were sex and age matched. Weak Cation Exchange magnetic beads kits were used to fractionate serum samples according to the manufacture's protocols. After binding and washing, the bound proteins and peptides were eluted from the magnetic beads and mixed with matrix and spotted on to targets. Protein profiles were generated using microflex MALDI-TOF MS (Bruker Daltonics). The protein profiles were then analyzed using bioinformatics tool Zhejiang University - ProteinChip Data Analysis System software to analyze the proteomic fingerprints and find the biomarkers. Results: The pattern to separate the patients with family history colorectal adenomas and sporadic colorectal adenomas by bioinformatics was constructed, which had a specificity of 93.3% and sensitivity of 100%, respectively. The model was comprised of 6 potential biomarkers with m/z of 4644, 2218, 2082, 2071, 4615 and 2210Da, respectively. The peak, 2218, 2082, 2071 and 2210Da, was Significantly (p<0.01) highly expressed in family history colorectal adenomas compared to which in no family history patients; and the other 2 peaks were weakly expressed in family history colorectal adenomas. In order to confirm the correlation of these protein markers and the family history colorectal adenomas, the family history colorectal adenomas group is also compared to the healthy individuals. Significantly highly expressed in family history colorectal adenomas also was found in The peak, 2218, 2082, 2071 and 2210Da compared to which in healthy individuals, and the other 2 biomarkers 4644, 4615 also appeared to be expressed in an opposite way. Conclusions: Applying the proteomics approach, we found 6 peaks which differently express in patients with family history colorectal adenomas compare to sporadic colorectal adenomas and healthy individuals. In addition to the gene level detection, these proteins maybe are new colorectal cancer genetic susceptibility biomarkers, which can help to apply to screen high-risk genetic susceptible populations. Citation Format: Yu Jiekai, Huang Yanqin, Lin Chen, Yuan Ying, Zheng Shu. Applied the proteomics characteristics to detect the inherited colorectal adenomas. [abstract]. In: Proceedings of the Eleventh Annual AACR International Conference on Frontiers in Cancer Prevention Research; 2012 Oct 16-19; Anaheim, CA. Philadelphia (PA): AACR; Cancer Prev Res 2012;5(11 Suppl):Abstract nr A13.
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