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Open MS/MS spectral library search to identify unanticipated post-translational modifications and increase spectral identification rate

机译:打开MS / MS光谱库搜索以识别意外的翻译后修饰并提高光谱识别率

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摘要

>Motivation: Identification of post-translationally modified proteins has become one of the central issues of current proteomics. Spectral library search is a new and promising computational approach to mass spectrometry-based protein identification. However, its potential in identification of unanticipated post-translational modifications has rarely been explored. The existing spectral library search tools are designed to match the query spectrum to the reference library spectra with the same peptide mass. Thus, spectra of peptides with unanticipated modifications cannot be identified.>Results: In this article, we present an open spectral library search tool, named pMatch. It extends the existing library search algorithms in at least three aspects to support the identification of unanticipated modifications. First, the spectra in library are optimized with the full peptide sequence information to better tolerate the peptide fragmentation pattern variations caused by some modification(s). Second, a new scoring system is devised, which uses charge-dependent mass shifts for peak matching and combines a probability-based model with the general spectral dot-product for scoring. Third, a target-decoy strategy is used for false discovery rate control. To demonstrate the effectiveness of pMatch, a library search experiment was conducted on a public dataset with over 40 000 spectra in comparison with SpectraST, the most popular library search engine. Additional validations were done on four published datasets including over 150 000 spectra. The results showed that pMatch can effectively identify unanticipated modifications and significantly increase spectral identification rate.>Availability: >Contact: ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:鉴定翻译后修饰的蛋白质已成为当前蛋白质组学的核心问题之一。光谱库搜索是一种新的且很有前途的计算方法,可用于基于质谱的蛋白质鉴定。然而,很少有可能发现其在鉴定意料之外的翻译后修饰中的潜力。现有的谱库搜索工具旨在将查询质谱图与具有相同肽质量的参考谱库质谱图进行匹配。因此,无法鉴定出具有意料之外的修饰的肽谱。>结果:在本文中,我们提供了一个开放的谱库搜索工具,名为pMatch。它至少在三个方面扩展了现有的库搜索算法,以支持对意外修改的识别。首先,使用完整的肽序列信息对库中的光谱进行优化,以更好地忍受由某些修饰引起的肽片段化模式变化。其次,设计了一种新的评分系统,该系统使用依赖于电荷的质量偏移进行峰匹配,并将基于概率的模型与通用谱点乘积相结合进行评分。第三,目标诱骗策略用于错误发现率控制。为了证明pMatch的有效性,与最流行的图书馆搜索引擎SpectraST进行了比较,在具有超过40000个光谱的公共数据集上进行了图书馆搜索实验。对四个已公开的数据集(包括超过150000个光谱)进行了其他验证。结果表明,pMatch可以有效识别出意料之外的修饰并显着提高光谱识别率。>可用性: >联系方式; >补充信息:可在线访问生物信息学。

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