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Monte Carlo Simulation-Based Algorithms for Analysis of Shotgun Proteomic Data

机译:基于蒙特卡罗模拟的Shot弹枪蛋白质组数据分析算法

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摘要

Two new statistical models based on Monte Carlo Simulation (MCS) have been developed to score peptide matches in shotgun proteomic data and incorporated in a database search program, MassMatrix (). The first model evaluates peptide matches based on the total abundance of matched peaks in the experimental spectra. The second model evaluates amino acid residue tags within MS/MS spectra. The two models provide complementary scores for peptide matches that result in higher confidence in peptide identification when significant scores are returned from both models. The MCS-based models use a variance reduction technique that improves estimation precision. Due to the high computational expense of MCS-based models, peptide matches were prefiltered by other statistical models before further evaluation by the MCS-based models. Receiver operating characteristic analysis of the data sets confirmed that MCS-based models improved the overall performance of the MassMatrix search software, especially for low-mass accuracy data sets.
机译:已经开发了两种基于蒙特卡罗模拟(MCS)的新统计模型,以对shot弹枪蛋白质组数据中的肽段匹配进行评分,并将其纳入数据库搜索程序MassMatrix()中。第一个模型基于实验光谱中匹配峰的总丰度来评估肽匹配。第二个模型评估MS / MS光谱中的氨基酸残基标签。这两个模型为肽段匹配提供了互补的分数,当从两个模型中返回显着分数时,可以提高肽段鉴定的可信度。基于MCS的模型使用方差减少技术来提高估计精度。由于基于MCS的模型的计算成本很高,因此在通过基于MCS的模型进行进一步评估之前,先通过其他统计模型对肽匹配进行预过滤。数据集的接收器工作特性分析证实,基于MCS的模型改善了MassMatrix搜索软件的整体性能,尤其是对于低质量精度的数据集。

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