概率剖面-串联质谱新方法De Novo测序

T. Fridman, Robert M. Day, Jane Razumovsbya, Dong Xu, A. Gorin
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引用次数: 3

摘要

提出了一种新的实验串联质谱解译方法。一个庞大的先前分解的肽谱数据库被用来确定每个峰类别的“邻域模式”:C或n端离子,它们的脱水片段等。将已建立的模式应用于分配适合这些类别的新光谱峰的概率。一些峰值通常可以以相当的置信度识别,为De Novo算法组装序列子图创建强大的“锚点”。我们的方法是利用给定的MS实验数据集的所有信息内容,包括峰值强度,弱和噪声峰值,以及不寻常的片段。我们还讨论了在我们的方法中提供学习功能的方法:针对特定MS设备的调整和在考虑的峰值身份列表中由用户发起的更改。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probability profiles-novel approach in tandem mass spectrometry De Novo sequencing
A novel method is proposed for deciphering experimental tandem mass spectra. A large database of previously resolved peptide spectra was used to determine "neighborhood patterns" for each peak category: C- or N-terminus ions, their dehydrated fragments, etc. The established patterns are applied to assign probabilities for new spectra peaks to fit into these categories. A few peaks often could be identified with a fair confidence creating strong "anchor points" for De Novo algorithm assembling sequence subgraphs. Our approach is utilizing all informational content of a given MS experimental data set, including peak intensities, weak and noisy peaks, and unusual fragments. We also discuss ways to provide learning features in our method: adjustments for a specific MS device and user initiated changes in the list of considered peak identities.
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