首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >An improved scoring method for the identification of endogenous peptides based on the Mascot MS/MS ion search
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An improved scoring method for the identification of endogenous peptides based on the Mascot MS/MS ion search

机译:基于吉祥物MS / MS离子搜索的基于吉祥物肽鉴定的改进评分方法

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摘要

To identify endogenous peptides using MS/MS analysis and searching against a polypeptide sequence database, a non-enzyme specific (NES) search considering all of the possible proteolytic cleavages is required. However, the use of a NES search generates more false positive hits than an enzyme specific search, and therefore shows lower identification performance. In this study, the use of the sub-ranked matches for improving the identification performance of the Mascot NES search was investigated and a new scoring method was developed that considered the contribution of all sub-ranked random match probabilities, named the contribution score (CS). The CS showed the highest identification sensitivity using the Mascot NES search with a full protein database when compared to the use of the Mascot first ranked score and the delta score (DS). The confident peptides identified by DS and CS were shown to be complementary. When applied to plant endogenous peptide identification, the identification numbers of tomato endogenous peptides using DS and CS were 176.3% and 184.2%, respectively, higher than the use of the first ranked score of Mascot. The combination of DS and CS identified 200.0% and 8.6% more tomato endogenous peptides compared to the use of Mascot and DS, respectively. This method by combining the CS and DS can significantly improve the identification performance of endogenous peptides without complex computational steps and is also able to improve the identification performance of the enzyme specific search. In addition to the application in the plant peptidomics analysis, this method may be applied to the improvement of peptidomics studies in different species. A web interface for calculating the DS and CS based on Mascot search results was developed herein.
机译:为了使用MS / MS分析和搜索多肽序列数据库,鉴定内源性肽,考虑所有可能的蛋白水解裂解的非酶特异性(NES)搜索。然而,NES搜索的使用产生的比酶特异性搜索更有假阳性点击,因此显示较低的识别性能。在这项研究中,研究了用于提高吉祥物NES搜索的识别性能的子排名匹配,并开发了一种新的评分方法,被认为是所有子排列随机匹配概率的贡献,命名为贡献得分(CS )。与使用吉祥物首次排名分数和DELTA得分(DS)相比,CS使用吉祥物NES搜索最高的识别灵敏度。 DS和CS鉴定的自信肽被证明是互补的。当应用于植物内源性肽鉴定时,使用DS和Cs的番茄内源肽的鉴定数分别为176.3%和184.2%,高于使用吉祥物的第一次排名得分。与使用吉祥物和DS相比,DS和Cs的组合鉴定了200.0%和8.6%的番茄内源性肽。通过组合CS和DS的这种方法可以显着改善内源性肽的鉴定性能而无需复杂的计算步骤,并且还能够改善酶特异性搜索的鉴定性能。除了在植物肽瘤分析中的应用外,该方法可以应用于不同物种中肽族研究的改善。这里开发了一种用于计算基于吉祥物搜索结果的DS和CS的Web界面。

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