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MODELING AND CHARACTERIZATION OF MULTI-CHARGE MASS SPECTRA FOR PEPTIDE SEQUENCING

机译:肽测序的多电荷质量谱的建模与表征

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Peptide sequencing using tandem mass spectrometry data is an important and challenging problem in proteomics. We address the problem of peptide sequencing for multi-charge spectra. Most peptide sequencing algorithms currently consider only charge one or two ions even for higher-charge spectra. We give a characterization of multi-charge spectra by generalizing existing models. Using our models, we analyzed spectra from Global Proteome Machine (GPM) [Craig R, Cortens JP, Beavis RC, J Proteome Res 3:1234–1242, 2004.] (with charges 1–5), Institute for Systems Biology (ISB) [Keller A, Purvine S, Nesvizhskii AI, Stolyar S, Goodlett DR, Kolker E, OMICS 6:207–212, 2002.] and Orbitrap (both with charges 1–3). Our analysis for the GPM dataset shows that higher charge peaks contribute significantly to prediction of the complete peptide. They also help to explain why existing algorithms do not perform well on multi-charge spectra. Based on these analyses, we claim that peptide sequencing algorithms can achieve higher sensitivity results if they also consider higher charge ions. We verify this claim by proposing a de novo sequencing algorithm called the greedy best strong tag (GBST) algorithm that is simple but considers higher charge ions based on our new model. Evaluation on multi-charge spectra shows that our simple GBST algorithm outperforms Lutefisk and PepNovo, especially for the GPM spectra of charge three or more.
机译:使用串联质谱数据进行肽测序是蛋白质组学中一个重要且具有挑战性的问题。我们解决了多电荷谱图的肽测序问题。目前,大多数肽测序算法都认为即使带较高电荷的光谱也只能带一个或两个离子。通过概括现有模型,我们给出了多电荷谱的特征。使用我们的模型,我们分析了全球蛋白质组仪(GPM)的光谱[Craig R,Cortens JP,Beavis RC,J Proteome Res 3:1234–1242,2004。](收费1-5),系统生物学研究所(ISB) )[Keller A,Purvine S,Nesvizhskii AI,Stolyar S,Goodlett DR,Kolker E,OMICS 6:207-212,2002年。]和Orbitrap(收费均为1-3)。我们对GPM数据集的分析表明,较高的电荷峰可显着预测完整肽段。它们还有助于解释为什么现有算法在多电荷谱图上表现不佳。基于这些分析,我们认为,如果肽测序算法还考虑了更高的电荷离子,则可以实现更高的灵敏度结果。我们通过提出一种称为贪婪最佳强标签(GBST)算法的从头测序算法来验证这一说法,该算法很简单,但根据我们的新模型考虑了较高电荷的离子。对多电荷谱图的评估表明,我们的简单GBST算法优于Lutefisk和PepNovo,尤其是对于三个或更多电荷的GPM谱图。

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