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MSblender: A probabilistic approach for integrating peptide identifications from multiple database search engines

机译:MSblender:一种集成来自多个数据库搜索引擎的肽段鉴定的概率方法

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摘要

Shotgun proteomics using mass spectrometry is a powerful method for protein identification but suffers limited sensitivity in complex samples. Integrating peptide identifications from multiple database search engines is a promising strategy to increase the number of peptide identifications and reduce the volume of unassigned tandem mass spectra. Existing methods pool statistical significance scores such as p-values or posterior probabilities of peptide-spectrum matches (PSMs) from multiple search engines after high scoring peptides have been assigned to spectra, but these methods lack reliable control of identification error rates as data are integrated from different search engines. We developed a statistically coherent method for integrative analysis, termed MSblender. MSblender converts raw search scores from search engines into a probability score for every possible PSM and properly accounts for the correlation between search scores. The method reliably estimates false discovery rates and identifies more PSMs than any single search engine at the same false discovery rate. Increased identifications increment spectral counts for most proteins and allow quantification of proteins that would not have been quantified by individual search engines. We also demonstrate that enhanced quantification contributes to improve sensitivity in differential expression analyses.
机译:使用质谱法的弹枪蛋白质组学是蛋白质鉴定的有力方法,但在复杂样品中灵敏度有限。整合来自多个数据库搜索引擎的肽段识别是一种有前途的策略,可以增加肽段识别的数量并减少未分配的串联质谱的数量。现有方法在将高分值的肽分配给光谱后,汇集了多个搜索引擎的统计显着性得分(例如p值或肽谱匹配(PSM)的后验概率),但是由于集成了数据,这些方法缺乏可靠的识别错误率控制来自不同的搜索引擎。我们开发了一种用于统计分析的统计一致方法,称为MSblender。 MSblender将来自搜索引擎的原始搜索分数转换为每种可能的PSM的概率分数,并适当考虑了搜索分数之间的相关性。该方法可靠地估计错误发现率,并且以相同的错误发现率,比任何单个搜索引擎识别出更多的PSM。增加的鉴定增加了大多数蛋白质的光谱计数,并允许定量单个搜索引擎无法定量的蛋白质。我们还证明了增强的量化有助于提高差异表达分析的灵敏度。

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