A deep-learning framework for multi-level peptide–protein interaction prediction

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作者
Yipin Lei
Shuya Li
Ziyi Liu
Fangping Wan
Tingzhong Tian
Shao Li
Dan Zhao
Jianyang Zeng
机构
[1] Institute for Interdisciplinary Information Sciences,
[2] Tsinghua University,undefined
[3] Machine Learning Department,undefined
[4] Silexon AI Technology Co.,undefined
[5] Ltd.,undefined
[6] Institute of TCM-X,undefined
[7] MOE Key Laboratory of Bioinformatics,undefined
[8] Bioinformatics Division,undefined
[9] BNRist,undefined
[10] Department of Automation,undefined
[11] Tsinghua University,undefined
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摘要
Peptide-protein interactions are involved in various fundamental cellular functions and their identification is crucial for designing efficacious peptide therapeutics. Recently, a number of computational methods have been developed to predict peptide-protein interactions. However, most of the existing prediction approaches heavily depend on high-resolution structure data. Here, we present a deep learning framework for multi-level peptide-protein interaction prediction, called CAMP, including binary peptide-protein interaction prediction and corresponding peptide binding residue identification. Comprehensive evaluation demonstrated that CAMP can successfully capture the binary interactions between peptides and proteins and identify the binding residues along the peptides involved in the interactions. In addition, CAMP outperformed other state-of-the-art methods on binary peptide-protein interaction prediction. CAMP can serve as a useful tool in peptide-protein interaction prediction and identification of important binding residues in the peptides, which can thus facilitate the peptide drug discovery process.
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