BepiPred-3.0: Improved B-cell epitope prediction using protein language models

biorxiv(2022)

引用 16|浏览13
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摘要
B-cell epitope prediction tools are of great medical and commercial interest due to their practical applications in vaccine development. The introduction of protein language models (LM) trained on unprecedented large datasets of protein sequences and structures, tap into a powerful numeric representation that can be exploited to accurately predict local and global protein structural features from amino acid sequences only. In this paper, we present BepiPred 3.0, a sequence-based epitope prediction tool that, by exploiting LM embeddings, greatly improves the prediction accuracy for both linear and conformational epitope prediction on several independent test sets. Furthermore, by carefully selecting additional input variables and epitope residue annotation strategy, performance can be further improved, thus achieving extraordinary results. Our tool can predict epitopes across hundreds of sequences in mere minutes. It is freely available as a web server with a user-friendly interface to navigate the results, as well as a standalone downloadable package. ### Competing Interest Statement The authors have declared no competing interest.
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关键词
B-cell epitope prediction,B-cell epitopes,BepiPred,BepiPred-3.0,bioinformatics,deep learning,immunoinformatics,immunology,machine learning,protein language model
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