Language model-based B cell receptor sequence embeddings can effectively encode receptor specificity

Author:

Wang Meng1ORCID,Patsenker Jonathan2,Li Henry2,Kluger Yuval123ORCID,Kleinstein Steven H134ORCID

Affiliation:

1. Program in Computational Biology and Bioinformatics, Yale University , New Haven , CT, USA

2. Program in Applied Mathematics, Yale University , New Haven , CT, USA

3. Department of Pathology, Yale School of Medicine , New Haven , CT, USA

4. Department of Immunobiology, Yale School of Medicine , New Haven , CT, USA

Abstract

Abstract High throughput sequencing of B cell receptors (BCRs) is increasingly applied to study the immense diversity of antibodies. Learning biologically meaningful embeddings of BCR sequences is beneficial for predictive modeling. Several embedding methods have been developed for BCRs, but no direct performance benchmarking exists. Moreover, the impact of the input sequence length and paired-chain information on the prediction remains to be explored. We evaluated the performance of multiple embedding models to predict BCR sequence properties and receptor specificity. Despite the differences in model architectures, most embeddings effectively capture BCR sequence properties and specificity. BCR-specific embeddings slightly outperform general protein language models in predicting specificity. In addition, incorporating full-length heavy chains and paired light chain sequences improves the prediction performance of all embeddings. This study provides insights into the properties of BCR embeddings to improve downstream prediction applications for antibody analysis and discovery.

Funder

National Institute of Health

Publisher

Oxford University Press (OUP)

Subject

Genetics

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