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A mass accuracy sensitive probability based scoring algorithm for database searching of tandem mass spectrometry data

机译:基于质量精度敏感概率的评分算法用于串联质谱数据的数据库搜索

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Background Liquid chromatography coupled with tandem mass spectrometry (LC-MS/MS) has become one of the most used tools in mass spectrometry based proteomics. Various algorithms have since been developed to automate the process for modern high-throughput LC-MS/MS experiments. Results A probability based statistical scoring model for assessing peptide and protein matches in tandem MS database search was derived. The statistical scores in the model represent the probability that a peptide match is a random occurrence based on the number or the total abundance of matched product ions in the experimental spectrum. The model also calculates probability based scores to assess protein matches. Thus the protein scores in the model reflect the significance of protein matches and can be used to differentiate true from random protein matches. Conclusion The model is sensitive to high mass accuracy and implicitly takes mass accuracy into account during scoring. High mass accuracy will not only reduce false positives, but also improves the scores of true positive matches. The algorithm is incorporated in an automated database search program MassMatrix.
机译:背景技术液相色谱与串联质谱联用(LC-MS / MS)已成为基于质谱的蛋白质组学中最常用的工具之一。此后,已开发出各种算法来自动化现代高通量LC-MS / MS实验的过程。结果推导了一种基于概率的统计评分模型,用于评估串联MS数据库搜索中的肽和蛋白质匹配。模型中的统计分数表示基于实验光谱中匹配产物离子的数量或总丰度,肽段匹配为随机出现的概率。该模型还计算基于概率的分数以评估蛋白质匹配。因此,模型中的蛋白质得分反映了蛋白质匹配的重要性,可用于区分真假和随机蛋白质匹配。结论该模型对高质量精度敏感,并且在评分时隐式考虑了质量精度。高质量的准确性不仅会减少假阳性,而且会提高真正阳性匹配的分数。该算法包含在自动数据库搜索程序MassMatrix中。

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