蛋白质组
计算生物学
串联质谱法
计算机科学
蛋白质组学
鉴定(生物学)
串联质量标签
质谱法
定量蛋白质组学
人工智能
化学
生物信息学
生物
色谱法
生物化学
基因
植物
作者
Yuntao Dai,Yi Yang,Enhui Wu,Chengpin Shen,Liang Qiao
标识
DOI:10.1021/acs.jproteome.4c00118
摘要
Proteome analysis currently heavily relies on tandem mass spectrometry (MS/MS), which does not fully utilize MS1 features, as many precursors remain unselected for MS/MS fragmentation, especially in the cases of low abundance samples and wide abundance dynamic range samples. Therefore, leveraging MS1 features as a complement to MS/MS has become an attractive option to improve the coverage of feature identification. Herein, we propose MonoMS1, an approach combining deep learning-based retention time, ion mobility, detectability prediction, and logistic regression-based scoring for MS1 feature identification. The approach achieved a significant increase in MS1 feature identification based on an E. coli data set. Application of MonoMS1 to data sets with wide dynamic range, such as human serum proteome samples, and with low sample abundance, such as single-cell proteome samples, enabled substantial complementation of MS/MS-based peptide and protein identification. This method opens a new avenue for proteomic analysis and can boost proteomic research on complex samples.
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