首页> 外文期刊>Electrophoresis: The Official Journal of the International Electrophoresis Society >Automated integration of monolith-based protein separation with on-plate digestion for mass spectrometric analysis of esophageal adenocarcinoma human epithelial samples.
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Automated integration of monolith-based protein separation with on-plate digestion for mass spectrometric analysis of esophageal adenocarcinoma human epithelial samples.

机译:基于整体的蛋白质分离与板上消化的自动化整合,用于食道腺癌人上皮样品的质谱分析。

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摘要

A unique approach of automating the integration of monolithic capillary HPLC-based protein separation and on-plate digestion for subsequent MALDI-MS analysis has been developed. All liquid-handling procedures were performed using a robotic module. This automated high-throughput method minimizes the amount of time and extensive labor required for traditional in-solution digestion followed by exhaustive sample cleanup and analysis. Also, precise positioning of the droplet from the capillary HPLC separation onto the MALDI plate allows for preconcentration effects of analytes for improved sensitivity. Proteins from primary esophageal Barrett's adenocarcinoma tissue were prefractionated by chromatofocusing and analyzed successfully by this automated configuration, obtaining rapid protein identifications through PMF and sequencing analyses with high sequence coverage. Additionally, intact protein molecular weight values were obtained as a means to further confirm protein identification and also to identify potential sequence modifications of proteins. This simple and rapid method is a highly versatile and robust approach for the analysis of complex proteomes.
机译:已开发出一种独特的方法,可以自动进行基于整体毛细管HPLC的蛋白质分离和板上消化的集成,以用于后续MALDI-MS分析。所有液体处理程序均使用机器人模块执行。这种自动化的高通量方法最大程度地减少了传统的溶液内消解以及详尽的样品净化和分析所需的时间,并减少了繁琐的工作。同样,将毛细管HPLC分离中的液滴精确定位到MALDI板上,可实现分析物的预浓缩效果,从而提高灵敏度。通过色谱聚焦对原发性食管巴雷特腺癌组织中的蛋白质进行预分级,并通过这种自动配置成功进行了分析,从而通过PMF和具有高序列覆盖率的测序分析获得了快速的蛋白质鉴定。另外,获得完整的蛋白质分子量值,作为进一步确认蛋白质鉴定以及鉴定蛋白质潜在序列修饰的手段。这种简单而快速的方法是用于分析复杂蛋白质组的高度通用且强大的方法。

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