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pGlycoQuant with a deep residual network for quantitative glycoproteomics at intact glycopeptide level

Authors :
Siyuan Kong
Pengyun Gong
Wen-Feng Zeng
Biyun Jiang
Xinhang Hou
Yang Zhang
Huanhuan Zhao
Mingqi Liu
Guoquan Yan
Xinwen Zhou
Xihua Qiao
Mengxi Wu
Pengyuan Yang
Chao Liu
Weiqian Cao
Source :
Nature communications. 13(1)
Publication Year :
2022

Abstract

Large-scale intact glycopeptide identification has been advanced by software tools. However, tools for quantitative analysis remain lagging behind, which hinders exploring the differential site-specific glycosylation. Here, we report pGlycoQuant, a generic tool for both primary and tandem mass spectrometry-based intact glycopeptide quantitation. pGlycoQuant advances in glycopeptide matching through applying a deep learning model that reduces missing values by 19–89% compared with Byologic, MSFragger-Glyco, Skyline, and Proteome Discoverer, as well as a Match In Run algorithm for more glycopeptide coverage, greatly expanding the quantitative function of several widely used search engines, including pGlyco 2.0, pGlyco3, Byonic and MSFragger-Glyco. Further application of pGlycoQuant to the N-glycoproteomic study in three different metastatic HCC cell lines quantifies 6435 intact N-glycopeptides and, together with in vitro molecular biology experiments, illustrates site 979-core fucosylation of L1CAM as a potential regulator of HCC metastasis. We expected further applications of the freely available pGlycoQuant in glycoproteomic studies.

Details

ISSN :
20411723
Volume :
13
Issue :
1
Database :
OpenAIRE
Journal :
Nature communications
Accession number :
edsair.doi.dedup.....01412a586213d08a5145573e2c28b403