一种基于谱图的蛋白质序列过滤算法用于自顶向下质谱法的蛋白质形态鉴定。

Runmin Yang, Daming Zhu, Qiang Kou, Poomima Bhat-Nakshatri, Harikrishna Nakshatri, Si Wu, Xiaowen Liu
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引用次数: 1

摘要

数据库搜索是自顶向下串联质谱鉴定变形的主要方法。然而,当产生谱的目标蛋白形式包含翻译后修饰和/或突变时,将查询谱与大型数据库中的所有蛋白质序列对齐是非常缓慢的。因此,高效灵敏的蛋白质序列过滤算法是加快数据库搜索速度的关键。在本文中,我们提出了一种新的过滤算法,该算法从查询谱的子谱生成谱图,并在蛋白质数据库中进行搜索以找到好的候选谱图。与序列标签和间隙标签方法相比,该方法避免了标签提取的步骤,从而简化了数据处理。实验结果表明,该方法在蛋白质序列过滤中具有较高的速度和灵敏度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Spectrum Graph-Based Protein Sequence Filtering Algorithm for Proteoform Identification by Top-Down Mass Spectrometry.

A Spectrum Graph-Based Protein Sequence Filtering Algorithm for Proteoform Identification by Top-Down Mass Spectrometry.

A Spectrum Graph-Based Protein Sequence Filtering Algorithm for Proteoform Identification by Top-Down Mass Spectrometry.

Database search is the main approach for identifying proteoforms using top-down tandem mass spectra. However, it is extremely slow to align a query spectrum against all protein sequences in a large database when the target proteoform that produced the spectrum contains post-translational modifications and/or mutations. As a result, efficient and sensitive protein sequence filtering algorithms are essential for speeding up database search. In this paper, we propose a novel filtering algorithm, which generates spectrum graphs from subspectra of the query spectrum and searches them against the protein database to find good candidates. Compared with the sequence tag and gaped tag approaches, the proposed method circumvents the step of tag extraction, thus simplifying data processing. Experimental results on real data showed that the proposed method achieved both high speed and high sensitivity in protein sequence filtration.

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