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A hierarchical statistical model to assess the confidence of peptides and proteins inferred from tandem mass spectrometry

机译:评估从串联质谱法推断出的肽和蛋白质的置信度的分级统计模型

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Motivation: Statistical evaluation of the confidence of peptide and protein identifications made by tandem mass spectrometry is a critical component for appropriately interpreting the experimental data and conducting downstream analysis. Although many approaches have been developed to assign confidence measure from different perspectives, a unified statistical framework that integrates the uncertainty of peptides and proteins is still missing. Results: We developed a hierarchical statistical model (HSM) that jointly models the uncertainty of the identified peptides and proteins and can be applied to any scoring system. With data sets of a standard mixture and the yeast proteome, we demonstrate that the HSM offers a reliable or at least conservative false discovery rate (FDR) estimate for peptide and protein identifications. The probability measure of HSM also offers a powerful discriminating score for peptide identification.
机译:动机:通过串联质谱对肽和蛋白质鉴定的可信度进行统计评估是正确解释实验数据和进行下游分析的关键组成部分。尽管已经开发出许多方法来从不同角度分配置信度,但是仍然缺少一个统一的统计框架,该框架整合了肽和蛋白质的不确定性。结果:我们开发了一种层次统计模型(HSM),该模型可以联合建模所鉴定的肽和蛋白质的不确定性,并且可以应用于任何评分系统。利用标准混合物和酵母蛋白质组的数据集,我们证明了HSM为肽和蛋白质鉴定提供了可靠的或至少保守的错误发现率(FDR)估计值。 HSM的概率测度还为肽鉴定提供了有力的区分分数。

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