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Faster and more accurate graphical model identification of tandem mass spectra using trellises

机译:使用网格更快,更准确地识别串联质谱图

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Tandem mass spectrometry (MS/MS) is the dominant high throughput technology for identifying and quantifying proteins in complex biological samples. Analysis of the tens of thousands of fragmentation spectra produced by an MS/MS experiment begins by assigning to each observed spectrum the peptide that is hypothesized to be responsible for generating the spectrum. This assignment is typically done by searching each spectrum against a database of peptides. To our knowledge, all existing MS/MS search engines compute scores individually between a given observed spectrum and each possible candidate peptide from the database. In this work, we use a trellis, a data structure capable of jointly representing a large set of candidate peptides, to avoid redundantly recomputing common sub-computations among different candidates. We show how trellises may be used to significantly speed up existing scoring algorithms, and we theoretically quantify the expected speedup afforded by trellises. Furthermore, we demonstrate that compact trellis representations of whole sets of peptides enables efficient discriminative learning of a dynamic Bayesian network for spectrum identification, leading to greatly improved spectrum identification accuracy.
机译:串联质谱(MS / MS)是用于鉴定和定量复杂生物样品中蛋白质的主要高通量技术。通过对MS / MS实验产生的成千上万的碎片质谱图进行分析,首先要为每个观察到的光谱分配一个假定为负责产生光谱的肽段。通常通过针对肽库搜索每个光谱来完成此分配。据我们所知,所有现有的MS / MS搜索引擎都会分别计算给定观察光谱与数据库中每种可能的候选肽之间的分数。在这项工作中,我们使用网格,这种数据结构能够共同代表一大组候选肽,以避免冗余地重新计算不同候选之间的公用子计算。我们展示了如何使用网格来显着加快现有的评分算法,并从理论上量化网格所提供的预期加速。此外,我们证明了完整肽段的紧凑网格表示法能够有效区分学习动态贝叶斯网络以进行频谱识别,从而大大提高了频谱识别的准确性。

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