AntiFormer: graph enhanced large language model for binding affinity prediction

Author:

Wang Qing12,Feng Yuzhou34,Wang Yanfei12,Li Bo5ORCID,Wen Jianguo67,Zhou Xiaobo67,Song Qianqian12ORCID

Affiliation:

1. Department of Health Outcomes and Biomedical Informatics , College of Medicine, , FL 32611 , USA

2. University of Florida , College of Medicine, , FL 32611 , USA

3. Department of Laboratory Medicine and West China Biomedical Big Data Center, West China Hospital, Sichuan University , Chengdu 610041 , China

4. Shihezi University School of Medicine, Shihezi University , Shihezi 832003 , China

5. Department of Computer and Information Science, University of Macau , Macau SAR , China

6. Center for Computational Systems Medicine , McWilliams School of Biomedical Informatics, , Houston, TX 77030 , USA

7. The University of Texas Health Science Center at Houston , McWilliams School of Biomedical Informatics, , Houston, TX 77030 , USA

Abstract

Abstract Antibodies play a pivotal role in immune defense and serve as key therapeutic agents. The process of affinity maturation, wherein antibodies evolve through somatic mutations to achieve heightened specificity and affinity to target antigens, is crucial for effective immune response. Despite their significance, assessing antibody–antigen binding affinity remains challenging due to limitations in conventional wet lab techniques. To address this, we introduce AntiFormer, a graph-based large language model designed to predict antibody binding affinity. AntiFormer incorporates sequence information into a graph-based framework, allowing for precise prediction of binding affinity. Through extensive evaluations, AntiFormer demonstrates superior performance compared with existing methods, offering accurate predictions with reduced computational time. Application of AntiFormer to severe acute respiratory syndrome coronavirus 2 patient samples reveals antibodies with strong neutralizing capabilities, providing insights for therapeutic development and vaccination strategies. Furthermore, analysis of individual samples following influenza vaccination elucidates differences in antibody response between young and older adults. AntiFormer identifies specific clonotypes with enhanced binding affinity post-vaccination, particularly in young individuals, suggesting age-related variations in immune response dynamics. Moreover, our findings underscore the importance of large clonotype category in driving affinity maturation and immune modulation. Overall, AntiFormer is a promising approach to accelerate antibody-based diagnostics and therapeutics, bridging the gap between traditional methods and complex antibody maturation processes.

Funder

Center of Excellence-International Collaboration Initiative Grant

West China Hospital, Sichuan University and Sichuan Science and Technology Program

NIH

NSF

Publisher

Oxford University Press (OUP)

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