CAS Key Laboratory of Separation Sciences for Analytical Chemistry, National Chromatographic R&A Center, Dalian Institute of Chemical Physics, Chinese Academy of Sciences, Dalian 116023, China.
Anal Chem. 2010 Jul 15;82(14):6168-75. doi: 10.1021/ac100975t.
Data dependent neutral loss triggered MS3 methodology (NLMS3) is often applied to acquire MS data for the analysis of phosphopeptides. Some phosphopeptides tend to seriously lose the phosphate and result in MS2 spectra with poor fragments and fragment-rich MS3 spectra, while some phosphopeptides do not lose phosphate and result in nice MS2 spectra. Since different phosphopeptides have fragment spectra with different characteristics, filtering all of the phosphopeptide identifications by setting a global filter criteria may be inappropriate and result in low sensitivity. In this study, we developed a classification filtering strategy to improve the phosphopeptide identification and phosphorylation site localization. Phosphopeptide identifications were classified into four classes according to their different characteristics, and then, the identifications from each class of mass spectra were processed and filtered separately using different filtering strategies. It was found that the overlap of phosphopeptide identifications from different classes was low and the classification strategy significantly improved the coverage of the phosphoproteome analysis. Compared with MS2 strategy and multiple stage activation (MSA) strategy, NLMS3 with the classification filtering strategy was demonstrated to have higher sensitivity and higher performance in localizing the phosphorylation to specific sites.
基于数据依赖的中性丢失触发多级质谱法 (NLMS3) 常用于获取磷酸肽分析的 MS 数据。一些磷酸肽容易严重丢失磷酸基团,导致 MS2 谱图碎片较少,而 MS3 谱图碎片丰富;而另一些磷酸肽则不会丢失磷酸基团,MS2 谱图质量较好。由于不同的磷酸肽具有不同特征的碎片谱图,通过设定全局筛选标准来筛选所有的磷酸肽鉴定可能并不合适,因为这会导致灵敏度降低。在本研究中,我们开发了一种分类筛选策略,以提高磷酸肽的鉴定和磷酸化位点定位的准确性。根据不同的特征,将磷酸肽鉴定分为四类,然后分别使用不同的筛选策略对每类质谱的鉴定结果进行处理和筛选。结果发现,不同类别的磷酸肽鉴定结果之间的重叠率较低,分类策略显著提高了磷酸蛋白质组分析的覆盖度。与 MS2 策略和多阶段激活 (MSA) 策略相比,NLMS3 联合分类筛选策略在磷酸化特异性位点定位方面具有更高的灵敏度和更好的性能。