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Extending the coverage of spectral libraries: a neighbor-based approach to predicting intensities of peptide fragmentation spectra

机译:延伸谱库的覆盖范围:基于邻居的方法来预测的肽片段化质谱强度

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摘要

Searching spectral libraries in tandem mass spectrometry (MS/MS) is an important new approach to improving the quality of peptide and protein identification. The idea relies on the observation that ion intensities in an MS/MS spectrum of a given peptide are generally reproducible across experiments, and thus, matching between spectra from an experiment and the spectra of previously identified peptides stored in a spectral library can lead to better peptide identification compared to the traditional database search. However, the use of libraries is greatly limited by their coverage of peptide sequences: even for well-studied organisms a large fraction of peptides have not been previously identified. To address this issue, we propose to expand spectral libraries by predicting the MS/MS spectra of peptides based on the spectra of peptides with similar sequences. We first demonstrate that the intensity patterns of dominant fragment ions between similar peptides tend to be similar. In accordance with this observation, we develop a neighbor-based approach which first selects peptides that are likely to have spectra similar to the target peptide and then combines their spectra using a weighted K-nearest neighbor method to accurately predict fragment ion intensities corresponding to the target peptide. This approach has the potential to predict spectra for every peptide in the proteome. When rigorous quality criteria are applied, we estimate that the method increases the coverage of spectral libraries available from the National Institute of Standards and Technology by 20–60%, although the values vary with peptide length and charge state. We find that the overall best search performance is achieved when spectral libraries are supplemented by the high quality predicted spectra.
机译:在串联质谱(MS / MS)中搜索光谱库是提高肽和蛋白质鉴定质量的重要新方法。该想法基于以下观察结果:给定肽段的MS / MS光谱中的离子强度通常在整个实验过程中都是可重现的,因此,将实验光谱图与光谱库中存储的先前鉴定的肽段光谱进行匹配可以得到更好的结果。肽段鉴定与传统数据库搜索相比。但是,文库的使用受到其肽序列覆盖范围的极大限制:即使对于经过充分研究的生物,以前也没有发现很大一部分肽。为了解决这个问题,我们建议通过基于具有相似序列的肽谱预测肽段的MS / MS谱图来扩展谱库。我们首先证明相似肽之间的主要片段离子的强度模式趋于相似。根据这一观察结果,我们开发了一种基于邻域的方法,该方法首先选择可能具有与目标肽相似的光谱的肽,然后使用加权K近邻法将其光谱合并以准确预测对应于目标肽的片段离子强度。靶肽。这种方法具有预测蛋白质组中每种肽谱的潜力。当采用严格的质量标准时,我们估计该方法可使国家标准技术研究所的光谱库覆盖率提高20-60%,尽管其值随肽长度和电荷状态而变化。我们发现,当频谱库中补充有高质量的预测频谱时,可以实现总体最佳搜索性能。

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