首页> 外文会议>Pacific Symposium on Biocomputing 2007 >MINING TANDEM MASS SPECTRAL DATA TO DEVELOP A MORE ACCURATE MASS ERROR MODEL FOR PEPTIDE IDENTIFICATION
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MINING TANDEM MASS SPECTRAL DATA TO DEVELOP A MORE ACCURATE MASS ERROR MODEL FOR PEPTIDE IDENTIFICATION

机译:挖掘串联质谱数据以开发更准确的肽段识别错误模型

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The assumption on the mass error distribution of fragment ions plays a crucial role in peptide identification by tandem mass spectra. Previous mass error models are the simplistic uniform or normal distribution with empirically set parameter values. In this paper, we propose a more accurate mass error model, namely conditional normal model, and an iterative parameter learning algorithm. The new model is based on two important observations on the mass error distribution, I.e. the linearity between the mean of mass error and the ion mass, and the log-log linearity between the standard deviation of mass error and the peak intensity. To our knowledge, the latter quantitative relationship has never been reported before. Experimental results demonstrate the effectiveness of our approach in accurately quantifying the mass error distribution and the ability of the new model to improve the accuracy of peptide identification.
机译:碎片离子质量误差分布的假设在串联质谱鉴定肽中起着至关重要的作用。先前的质量误差模型是具有经验设置的参数值的简单的均匀分布或正态分布。本文提出了一种更精确的质量误差模型,即条件正态模型和迭代参数学习算法。新模型基于对质量误差分布的两个重要观察,即质量误差平均值与离子质量之间的线性,以及质量误差标准偏差与峰强度之间的对数线性。据我们所知,后一种定量关系从未被报道过。实验结果证明了我们的方法在准确量化质量误差分布中的有效性以及新模型提高肽鉴定准确性的能力。

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