化学
电子转移离解
离解(化学)
串联质谱法
氨基酸
碎片(计算)
质谱
碰撞诱导离解
人工神经网络
质谱法
谱线
等压标记
色谱法
人工智能
物理化学
生物化学
蛋白质质谱法
物理
操作系统
计算机科学
天文
作者
Xie‐Xuan Zhou,Wen‐Feng Zeng,Hao Chi,Chunjie Luo,Chao Liu,Jianfeng Zhan,Si‐Min He,Zhifei Zhang
出处
期刊:Analytical Chemistry
[American Chemical Society]
日期:2017-11-21
卷期号:89 (23): 12690-12697
被引量:181
标识
DOI:10.1021/acs.analchem.7b02566
摘要
In tandem mass spectrometry (MS/MS)-based proteomics, search engines rely on comparison between an experimental MS/MS spectrum and the theoretical spectra of the candidate peptides. Hence, accurate prediction of the theoretical spectra of peptides appears to be particularly important. Here, we present pDeep, a deep neural network-based model for the spectrum prediction of peptides. Using the bidirectional long short-term memory (BiLSTM), pDeep can predict higher-energy collisional dissociation, electron-transfer dissociation, and electron-transfer and higher-energy collision dissociation MS/MS spectra of peptides with >0.9 median Pearson correlation coefficients. Further, we showed that intermediate layer of the neural network could reveal physicochemical properties of amino acids, for example the similarities of fragmentation behaviors between amino acids. We also showed the potential of pDeep to distinguish extremely similar peptides (peptides that contain isobaric amino acids, for example, GG = N, AG = Q, or even I = L), which were very difficult to distinguish using traditional search engines.
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