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MUMAL: Multivariate analysis in shotgun proteomics using machine learning techniques

机译:MUMAL:使用机器学习技术对shot弹枪蛋白质组学进行多变量分析

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摘要

BackgroundThe shotgun strategy (liquid chromatography coupled with tandem mass spectrometry) is widely applied for identification of proteins in complex mixtures. This method gives rise to thousands of spectra in a single run, which are interpreted by computational tools. Such tools normally use a protein database from which peptide sequences are extracted for matching with experimentally derived mass spectral data. After the database search, the correctness of obtained peptide-spectrum matches (PSMs) needs to be evaluated also by algorithms, as a manual curation of these huge datasets would be impractical. The target-decoy database strategy is largely used to perform spectrum evaluation. Nonetheless, this method has been applied without considering sensitivity, i.e., only error estimation is taken into account. A recently proposed method termed MUDE treats the target-decoy analysis as an optimization problem, where sensitivity is maximized. This method demonstrates a significant increase in the retrieved number of PSMs for a fixed error rate. However, the MUDE model is constructed in such a way that linear decision boundaries are established to separate correct from incorrect PSMs. Besides, the described heuristic for solving the optimization problem has to be executed many times to achieve a significant augmentation in sensitivity.
机译:背景技术shot弹枪策略(液相色谱与串联质谱联用)已广泛用于鉴定复杂混合物中的蛋白质。此方法一次运行可产生数千个光谱,这些光谱可通过计算工具进行解释。此类工具通常使用蛋白质数据库,从中提取肽序列以与实验得出的质谱数据匹配。在数据库搜索之后,还需要通过算法来评估获得的肽谱匹配(PSM)的正确性,因为手动管理这些庞大的数据集是不切实际的。目标诱饵数据库策略主要用于执行频谱评估。尽管如此,在没有考虑灵敏度的情况下仍应用了该方法,即,仅考虑了误差估计。最近提出的称为MUDE的方法将目标诱饵分析视为一种优化问题,在该问题中,灵敏度最大化。对于固定的错误率,此方法证明了检索到的PSM数量显着增加。但是,MUDE模型的构建方式是建立线性决策边界以将正确的PSM与错误的PSM分开。此外,所描述的用于解决优化问题的试探法必须执行多次以实现灵敏度的显着提高。

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