4.7 Article

Comparison and optimization of strategies for a more profound profiling of the sialylated N-glycoproteomics in human plasma using metal oxide enrichment

期刊

ANALYTICAL AND BIOANALYTICAL CHEMISTRY
卷 405, 期 16, 页码 5519-5529

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s00216-013-6971-5

关键词

Human plasma; Sialic acid; Glycosylation; TiO2

资金

  1. National Key Program for Basic Research of China [2011CB910603, 2013CB911204]
  2. National High Technology Research and Development Program of China [2012AA020203, 2012AA020202]
  3. International Scientific Cooperation Project of China [2011DFB30370]
  4. National Natural Science Foundation of China [21275005, 31100591, 21235001]
  5. Beijing Nova Program [Z121107002512014]

向作者/读者索取更多资源

Glycosylation is an important posttranslational modification of proteins and plays a crucial role in both cellular functions and secretory pathways. Sialic acids (SAs), a family of nine-carbon-containing acidic monosaccharides, often terminate the glycan structures of cell surface molecules and secreted glycoproteins and perform an important role in many biological processes. Hence, a more profound profiling of the sialylated glycoproteomics may improve our knowledge of this modification and its effects on protein functions. Here, we systematically investigated different strategies to enrich the SA proteins in human plasma using a newly developed technology that utilizes titanium dioxide for sialylated N-glycoproteomics profiling by mass spectrometry. Our results showed that using a combination of a filter-aided sample preparation method, TiO2 chromatography, multiple enzyme digestion, and two-dimensional reversed-phase peptide fractionation led to a more profound profiling of the SA proteome. In total, 982 glycosylation sites in 413 proteins were identified, among which 37.8 % were newly identified, to establish the largest database of sialic acid containing proteins from human plasma.

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