Optimization of Spectral Library Size Improves DIA-MS Proteome Coverage

Ge W,Liang X, Zhang F, Xu L, Xiang N, Sun R, Liu W, Xue Z, Yi X, Wang B, Zhu J, Lu C, Zhan X,Chen L, Wu Y, Zheng Z, Gong W, Wu Q, Yu J, Ye Z, Teng X,Huang S,Zheng S,Liu T,Yuan C,Guo T

bioRxiv (Cold Spring Harbor Laboratory)(2020)

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摘要
Abstract Efficient peptide and protein identification from data-independent acquisition mass spectrometric (DIA-MS) data typically rely on an experiment-specific spectral library with a suitable size. Here, we report a computational strategy for optimizing the spectral library for a specific DIA dataset based on a comprehensive spectral library, which is accomplished by a priori analysis of the DIA dataset. This strategy achieved up to 44.7% increase in peptide identification and 38.1% increase in protein identification in the test dataset of six colorectal tumor samples compared with the comprehensive pan-human library strategy. We further applied this strategy to 389 carcinoma samples from 15 tumor datasets and observed up to 39.2% increase in peptide identification and 19.0% increase in protein identification. In summary, we present a computational strategy for spectral library size optimization to achieve deeper proteome coverage of DIA-MS data.
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关键词
Proteome,Identification (information),Computational biology,Peptide,Computer science,Colorectal tumor,Protein identification
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