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首页> 外文期刊>Mass Spectrometry Reviews >QUANTITATIVE MASS SPECTROMETRIC ANALYSIS OF GLYCOPROTEINS COMBINED WITH ENRICHMENT METHODS
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QUANTITATIVE MASS SPECTROMETRIC ANALYSIS OF GLYCOPROTEINS COMBINED WITH ENRICHMENT METHODS

机译:糖蛋白与富集方法相结合的定量质谱分析

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Mass spectrometry (MS) has been a core technology for high sensitive and high-throughput analysis of the enriched glycoproteome in aspects of quantitative assays as well as qualitative profiling of glycoproteins. Because it has been widely recognized that aberrant glycosylation in a glycoprotein may involve in progression of a certain disease, the development of efficient analysis tool for the aberrant glycoproteins is very important for deep understanding about pathological function of the glycoprotein and new biomarker development. This review first describes the protein glycosylation-targeting enrichment technologies mainly employing solid-phase extraction methods such as hydrizide-capturing, lectin-specific capturing, and affinity separation techniques based on porous graphitized carbon, hydrophilic interaction chromatography, or immobilized boronic acid. Second, MS-based quantitative analysis strategies coupled with the protein glycosylation-targeting enrichment technologies, by using a label-free MS, stable isotope-labeling, or targeted multiple reaction monitoring (MRM) MS, are summarized with recent published studies. (c) 2014 The Authors. Mass Spectrometry Reviews Published by Wiley Periodicals, Inc. Rapid Commun. Mass Spec Rev 34:148-165, 2015.
机译:质谱(MS)已成为在定量测定以及糖蛋白定性分析方面对富集的糖蛋白组进行高灵敏度和高通量分析的一项核心技术。因为已经广泛认识到糖蛋白中的异常糖基化可能参与某种疾病的进展,所以开发异常糖蛋白的有效分析工具对于深入了解糖蛋白的病理功能和新的生物标记物的开发非常重要。这篇综述首先描述了蛋白质糖基化靶向富集技术,该技术主要采用固相萃取方法,例如氢化物捕获,凝集素特异性捕获以及基于多孔石墨化碳,亲水相互作用色谱法或固定化硼酸的亲和分离技术。第二,最近发表的研究总结了基于质谱的定量分析策略,结合蛋白质糖基化靶向富集技术,通过使用无标记质谱,稳定同位素标记或靶向多反应监测(MRM)MS。 (c)2014作者。质谱评论,由Wiley Periodicals,Inc. Rapid Commun发布。 Mass Spec Rev 34:148-165,2015年。

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