Profiling antigen-binding affinity of B cell repertoires in tumors by deep learning predicts immune-checkpoint inhibitor treatment outcomes
- PMID: 40579590
- DOI: 10.1038/s43018-025-01001-5
Profiling antigen-binding affinity of B cell repertoires in tumors by deep learning predicts immune-checkpoint inhibitor treatment outcomes
Abstract
The capability to profile the landscape of antigen-binding affinities of a vast number of antibodies (B cell receptors, BCRs) will provide a powerful tool to reveal biological insights. However, experimental approaches for detecting antibody-antigen interactions are costly and time-consuming and can only achieve low-to-mid throughput. In this work, we developed Cmai (contrastive modeling for antigen-antibody interactions) to address the prediction of binding between antibodies and antigens that can be scaled to high-throughput sequencing data. We devised a biomarker based on the output from Cmai to map the antigen-binding affinities of BCR repertoires. We found that the abundance of tumor antigen-targeting antibodies is predictive of immune-checkpoint inhibitor (ICI) treatment response. We also found that, during immune-related adverse events (irAEs) caused by ICI, humoral immunity is preferentially responsive to intracellular antigens from the organs affected by the irAEs. We used Cmai to construct a BCR-based irAE risk score, which predicted the timing of the occurrence of irAEs.
© 2025. The Author(s), under exclusive licence to Springer Nature America, Inc.
Conflict of interest statement
Competing interests: T.W. reports personal fees from Merck. D.G. has received research funding from Astra-Zeneca, BerGenBio, Karyopharm and Novocure, has stock ownership in Gilead, Medtronic and Walgreens, holds consulting or advisory board positions in Astra-Zeneca, Catalyst Pharmaceuticals, Daiichi-Sankyo, Elevation Oncology, Janssen Scientific Affairs, Jazz Pharmaceuticals, Regeneron Pharmaceuticals and Sanofi and is the cofounder and chief scientific officer of OncoSeer Diagnostics. The remaining authors declare no competing interests.
References
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- Zhang, Z. et al. Interpreting the B-cell receptor repertoire with single-cell gene expression using Benisse. Nat. Mach. Intell. 4, 596–604 (2022). - DOI
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- RP190208/Cancer Prevention and Research Institute of Texas (Cancer Prevention Research Institute of Texas)
- RP230363/Cancer Prevention and Research Institute of Texas (Cancer Prevention Research Institute of Texas)
- R38HL150214/U.S. Department of Health & Human Services | National Institutes of Health (NIH)
- 1U01AI156189/U.S. Department of Health & Human Services | National Institutes of Health (NIH)
- MRAT-18-114-01-LIB/American Cancer Society (American Cancer Society, Inc.)
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