首页> 外文期刊>Analytical chemistry >Selective 351 nm Photodissociation of Cysteine-Containing Peptides for Discrimination of Antigen-Binding Regions of IgG Fragments in Bottom-Up Liquid Chromatography-Tandem Mass Spectrometry Workflows
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Selective 351 nm Photodissociation of Cysteine-Containing Peptides for Discrimination of Antigen-Binding Regions of IgG Fragments in Bottom-Up Liquid Chromatography-Tandem Mass Spectrometry Workflows

机译:半胱氨酸肽的选择性351 nm光解离用于区分自下而上液相色谱-串联质谱工作流程中IgG片段的抗原结合区

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Despite tremendous inroads in the development of more sensitive liquid chromatography-tandem mass spectrometry (LC-MS/MS) strategies for mass spectrometry-based proteomics, there remains a significant need for enhancing the selectivity of MS/MS-based workflows for streamlined analysis of complex biological mixtures. Here, a novel LC-MS/MS platform based on 351 nm ultraviolet photodissociation (UVPD) is presented for the selective analysis of cysteine-peptide subsets in complex protein digests. Cysteine-selective UVPD is mediated through the site-specific conjugation of reduced cysteine residues with a 351 nm active chromogenic Alexa Fluor 350 (AF350) maleimide tag. Only peptides containing the AF350 chromophore undergo photodissociation into extensive arrays of b- and y-type fragment ions, thus providing a facile means for differentiating cysteine-peptide targets from convoluting peptide backgrounds. With the use of this approach in addition to strategic proteolysis, the selective analysis of diagnostic heavy-chain complementarity determining regions (CDRs) of single-chain antibody (scAb) fragments is demonstrated.
机译:尽管在为基于质谱的蛋白质组学开发更灵敏的液相色谱-串联质谱(LC-MS / MS)策略方面取得了巨大进展,但仍然非常需要提高基于MS / MS的工作流程的选择性,以简化对蛋白质组学的分析复杂的生物混合物。在这里,提出了一种基于351 nm紫外光解离(UVPD)的新型LC-MS / MS平台,用于选择性分析复杂蛋白质消化物中的半胱氨酸-肽子集。半胱氨酸选择性UVPD通过还原的半胱氨酸残基与351 nm活性发色Alexa Fluor 350(AF350)马来酰亚胺标签的位点特异性缀合来介导。仅含有AF350发色团的肽会发生光解离,形成大量的b型和y型片段离子,从而为区分半胱氨酸肽靶标和复杂的肽本底提供了一种简便的方法。除策略性蛋白水解外,还使用这种方法,证明了对单链抗体(scAb)片段的诊断性重链互补决定区(CDR)的选择性分析。

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