蛋白质组
计算机科学
肽
数据集
集合(抽象数据类型)
计算生物学
质谱法
蛋白质组学
生物信息学
化学
生物
人工智能
色谱法
生物化学
程序设计语言
基因
作者
Weigang Ge,Xiao Liang,Fangfei Zhang,Yifan Hu,Luang Xu,Nan Xiang,Rui Sun,Wei Liu,Zhangzhi Xue,Xiao Yi,Yaoting Sun,Bo Wang,Jiang Zhu,Cong Lu,Xiaolu Zhan,Lirong Chen,Yan Wu,Zhiguo Zheng,Wangang Gong,Qi‐Jun Wu
标识
DOI:10.1021/acs.jproteome.1c00640
摘要
Efficient peptide and protein identifications from data-independent acquisition mass spectrometric (DIA-MS) data typically rely on a project-specific spectral library with a suitable size. Here, we describe subLib, a computational strategy for optimizing the spectral library for a specific DIA data set based on a comprehensive spectral library, requiring the preliminary analysis of the DIA data set. Compared with the pan-human library strategy, subLib achieved a 41.2% increase in peptide precursor identifications and a 35.6% increase in protein group identifications in a test data set of six colorectal tumor samples. We also applied this strategy to 389 carcinoma samples from 15 tumor data sets: up to a 39.2% increase in peptide precursor identifications and a 19.0% increase in protein group identifications were observed. Our strategy for spectral library size optimization thus successfully proved to deepen the proteome coverages of DIA-MS data.
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