Ranking tandem mass spectra: And the impact of database size and scoring function on peptide spectrum matches

Canan Has, Cemal Ulas Kundakci, Aybuge Altay, J. Allmer
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引用次数: 1

Abstract

Proteomics is currently driven by mass spectrometry. For the analysis of tandem mass spectra many computational algorithms have been proposed. There are two approaches, one which assigns a peptide sequence to a tandem mass spectrum directly and one which employs a sequence database for looking up possible solutions. The former method needs high quality spectra while the latter can tolerate lower quality spectra. Since both methods are computationally expensive, it is sensible to establish spectral quality using an independent fast algorithm. In this study, we first establish proper settings for database search algorithms for the analysis of spectra in our gold benchmark dataset and then analyze the performance of ScanRanker, an algorithm for quality assessment of tandem MS spectra, on this ground truth data. We found that OMSSA and MSGFDB have limitations in their scoring functions but were able to form a proper consensus prediction using majority vote for our benchmark data. Unfortunately, ScanRanker's results do not correlate well with the consensus and ScanRanker is also too slow to be used in the capacity it is supposed to be used.
串联质谱排序:以及数据库大小和评分功能对肽谱匹配的影响
蛋白质组学目前是由质谱法驱动的。对于串联质谱的分析,已经提出了许多计算算法。有两种方法,一种是直接将肽序列分配给串联质谱,另一种是使用序列数据库查找可能的解决方案。前一种方法需要高质量的光谱,后一种方法可以容忍低质量的光谱。由于这两种方法的计算成本都很高,因此使用独立的快速算法建立光谱质量是明智的。在本研究中,我们首先为我们的黄金基准数据集中的光谱分析建立了适当的数据库搜索算法设置,然后分析了ScanRanker(串联质谱质量评估算法)在该基线数据上的性能。我们发现OMSSA和MSGFDB在评分功能上有局限性,但能够对我们的基准数据使用多数投票形成适当的共识预测。不幸的是,ScanRanker的结果与共识并没有很好地关联,而且ScanRanker也太慢了,无法在应该使用的容量中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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