首页> 外文会议>Research in Computational Molecular Biology; Lecture Notes in Bioinformatics; 4453 >Peptide Retention Time Prediction Yields Improved Tandem Mass Spectrum Identification for Diverse Chromatography Conditions
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Peptide Retention Time Prediction Yields Improved Tandem Mass Spectrum Identification for Diverse Chromatography Conditions

机译:肽保留时间预测可改善用于多种色谱条件的串联质谱

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Most tandem mass spectrum identification algorithms use information only from the final spectrum, ignoring precursor information such as peptide retention time (RT). Efforts to exploit peptide RT for peptide identification can be frustrated by its variability across liquid chromatography analyses. We show that peptide RT can be reliably predicted by training a support vector regressor on a single chromatography run. This dynamically trained model outperforms a published statically trained model of peptide RT across diverse chromatography conditions. In addition, the model can be used to filter peptide identifications that produce large discrepancies between observed and predicted RT. After filtering, estimated true positive peptide identifications increase by as much as 50% at a false discovery rate of 3%, with the largest increase for non-specific cleavage with elastase.
机译:大多数串联质谱识别算法仅使用来自最终质谱图的信息,而忽略诸如肽保留时间(RT)之类的前体信息。利用肽RT进行肽鉴定的努力可能会因其在液相色谱分析中的可变性而受挫。我们表明,可以通过在单个色谱运行中训练支持向量回归因子来可靠地预测肽段RT。在各种色谱条件下,这种动态训练的模型优于已发布的肽RT静态训练模型。此外,该模型可用于过滤在鉴定到的RT与预测的RT之间产生较大差异的肽段鉴定。过滤后,估计的真实阳性肽段鉴定会以3%的错误发现率增加多达50%,其中弹性蛋白酶非特异性切割的增加幅度最大。

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