A streamlined pipeline for multiplexed quantitative site-specific N-glycoproteomics

Pan Fang(Max Planck Institute for Biophysical Chemistry), Yanlong Ji(Goethe University Frankfurt), Ivan Silbern(Universitätsmedizin Göttingen), Carmen Doebele(Goethe University Frankfurt), Momchil Ninov(Universitätsmedizin Göttingen), Christof Lenz(Universitätsmedizin Göttingen), Thomas Oellerich(Goethe University Frankfurt), Kuan‐Ting Pan(Goethe University Frankfurt), Henning Urlaub(Universitätsmedizin Göttingen)
Nature Communications
October 19, 2020
Cited by 71Open Access
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Abstract

Regulation of protein N-glycosylation is essential in human cells. However, large-scale, accurate, and site-specific quantification of glycosylation is still technically challenging. We here introduce SugarQuant, an integrated mass spectrometry-based pipeline comprising protein aggregation capture (PAC)-based sample preparation, multi-notch MS3 acquisition (Glyco-SPS-MS3) and a data-processing tool (GlycoBinder) that enables confident identification and quantification of intact glycopeptides in complex biological samples. PAC significantly reduces sample-handling time without compromising sensitivity. Glyco-SPS-MS3 combines high-resolution MS2 and MS3 scans, resulting in enhanced reporter signals of isobaric mass tags, improved detection of N-glycopeptide fragments, and lowered interference in multiplexed quantification. GlycoBinder enables streamlined processing of Glyco-SPS-MS3 data, followed by a two-step database search, which increases the identification rates of glycopeptides by 22% compared with conventional strategies. We apply SugarQuant to identify and quantify more than 5,000 unique glycoforms in Burkitt's lymphoma cells, and determine site-specific glycosylation changes that occurred upon inhibition of fucosylation at high confidence.


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