MVSF-AB: Accurate antibody-antigen binding affinity prediction via multi-view sequence feature learning
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Shi, Yao
Hu, Shengqing
Hu, Shengshan
Guo, Peijin
Wan, Wei
Zhang, Leo Yu
Pan, Shirui
Li, Jizhou
Sun, Lichao
Lan, Xiaoli
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Abstract
Motivation Predicting the binding affinity between antigens and antibodies accurately is crucial for assessing therapeutic antibody effectiveness and enhancing antibody engineering and vaccine design. Traditional machine learning methods have been widely used for this purpose, relying on interfacial amino acids’ structural information. Nevertheless, due to technological limitations and high costs of acquiring structural data, the structures of most antigens and antibodies are unknown, and sequence-based methods have gained attention. Existing sequence-based approaches designed for protein-protein affinity prediction exhibit a significant drop in performance when applied directly to antibody-antigen affinity prediction due to imbalanced training data and lacking design in the model framework specifically for antibody-antigen, hindering the learning of key features of antibodies and antigens. Therefore, we propose MVSF-AB, a Multi-View Sequence Feature learning for accurate Antibody-antigen Binding affinity prediction.
Results MVSF-AB designs a multi-view method that fuses semantic features and residue features to fully utilize the sequence information of antibody-antigen and predicts the binding affinity. Experimental results demonstrate that MVSF-AB outperforms existing approaches in predicting unobserved natural antibody-antigen affinity and maintains its effectiveness when faced with mutant strains of antibodies.
Availability and implementation Datasets we used and source code are available on our public GitHub repository https://github.com/TAI-Medical-Lab/MVSF-AB.
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Bioinformatics
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© The Author(s) 2024. Published by Oxford University Press. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
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This publication has been entered in Griffith Research Online as an advance online version.
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Immunology
Bioinformatics and computational biology
Biological sciences
Information and computing sciences
Mathematical sciences
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Li, M; Shi, Y; Hu, S; Hu, S; Guo, P; Wan, W; Zhang, LY; Pan, S; Li, J; Sun, L; Lan, X, MVSF-AB: Accurate antibody-antigen binding affinity prediction via multi-view sequence feature learning, Bioinformatics, 2024