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Identification of Monosialylated N -glycoforms in the CDG Urinome by Ion Mobility Tandem Mass Spectrometry: The Potential for Clinical Applications

机译:通过离子淌度串联质谱法鉴定CDG尿素组中单唾液酸化N-糖型的潜力:临床应用潜力

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h2Abstract/h2 h3Introduction/h3 A novel approach of ion mobility tandem mass spectrometry (IMS-MS/MS) is applied to analysis of human glycourinome to obtain carbohydrate pattern data of congenital disorders of glycosylation patient. Overlapping of the complex carbohydrate mass range landscape has been highly reduced upon IMS-MS procedure, allowing more efficient identification by mapping and sequencing of glycan precursor ions, following their separation by mobility, according to difference in drift time through the traveling wave IMS cell. Intact and truncated N- and O-glycan structures modified by sialylation and fucosylation were identified according to their drift time separated molecular ions and submitted to fragmentation in a narrow mass window. h3IMS CID MS/MS Analysis/h3 The fragmentation spectra generated from the IMS separated precursor ions contain series of fragment ions maintaining the same mobility as their parent ions, and the assignment accuracy can be significantly enhanced. h3Conclusion/h3 According to the specific fragment ion patterns, carbohydrate epitopes described to be involved in pathological processes were assigned. A high potential of this glycomics-based strategy for clinical applications can be presented.
机译:>摘要 >简介将离子迁移串联质谱(IMS-MS / MS)的新方法用于人糖尿素组分析,以获得糖基化患者先天性疾病的碳水化合物模式数据。通过IMS-MS程序,已大大减少了复杂碳水化合物质量范围图的重叠,根据通过行波IMS单元的漂移时间差异,通过对糖类前体离子进行迁移和分离后,通过对糖类前体离子进行定位和测序,可以进行更有效的鉴定。根据唾液酸化和岩藻糖基化修饰的完整和截短的N-和O-聚糖结构,根据其漂移时间分离出的分子离子进行鉴定,并在狭窄的质量窗口中进行裂解。 > IMS CID MS / MS分析由IMS分离的前驱体离子生成的碎片谱包含一系列碎片离子,这些碎片离子与其母离子保持相同的迁移率,并且可以大大提高分配精度。 >结论根据特定的片段离子图谱,分配了被描述为与病理过程有关的碳水化合物表位。可以提出这种基于糖组学的策略在临床上的巨大潜力。

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