糖蛋白组学
化学
乳腺癌
癌症
内科学
生物化学
蛋白质组学
医学
基因
作者
Yi Yang,Dan Zhao,Ji Luo,Lin Ling,Yuxiang Lin,Baozhen Shan,Hongxu Chen,Liang Qiao
标识
DOI:10.1021/acs.analchem.4c03069
摘要
Intact glycopeptide characterization by mass spectrometry has proven to be a versatile tool for site-specific glycoproteomics analysis and biomarker screening. Here, we present a method using a new model of a Q-TOF instrument equipped with a Zeno trap for intact glycopeptide identification and demonstrate its ability to analyze large-cohort glycoproteomes. From 124 clinical serum samples of breast cancer, noncancerous diseases, and nondisease controls, a total of 6901 unique site-specific glycans on 807 glycosites of proteins were detected. Much more differences of glycoproteome were observed in breast diseases than the proteome. By employing machine learning, 15 site-specific glycans were determined as potential glyco-signatures in detecting breast cancer. The results demonstrate that our method provides a powerful tool in glycoproteomic studies.
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