A New Searching Strategy for the Identification of O-Linked Glycopeptides

糖肽 化学 聚糖 糖基化 数据库搜索引擎 计算生物学 生物化学 糖蛋白 搜索引擎 计算机科学 生物 情报检索 抗生素
作者
Jiawei Mao,Xin You,Hongqiang Qin,Cheng‐Ye Wang,Liming Wang,Mingliang Ye
出处
期刊:Analytical Chemistry [American Chemical Society]
卷期号:91 (6): 3852-3859 被引量:33
标识
DOI:10.1021/acs.analchem.8b04184
摘要

For the analysis of homogeneous post-translational modifications such as protein phosphorylation and acetylation, setting a variable modification on the specific residue(s) is applied to identify the modified peptides for database searching. However, this approach is often not applicable to identify intact mucin-type O-glycopeptides due to the high microheterogeneity of the glycosylation. Because there is virtually no carbohydrate-related tag on the peptide fragments after the O-glycopeptides are dissociated in HCD, we find it is unnecessary to set the variable mass tags on the Ser/Thr residues to identify the peptide sequences. In this study, we present a novel approach, termed as O-Search, for the interpretation of O-glycopeptide HCD spectra. Instead of setting the variable mass tags on the Ser/Thr residues, we set variable mass tags on the peptide level. The precursor mass of the MS/MS spectrum was deducted by every possible summed mass of O-glycan combinations on at most three S/T residues. All the spectra with these new precursor masses were searched against the protein sequence database without setting variable glycan modifications. It was found that this method had much decreased search space and had excellent sensitivity in the identification of O-glycopeptides. Compared with the conventional searching approach, O-Search yielded 96%, 86%, and 79% improvement in glycopeptide spectra matching, glycopeptide identification, and peptide sequence identification, respectively. It was demonstrated that O-Search enabled the consideration of more glycan structures and was fitted to analyze microheterogeneity of O-glycosylation.

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