Phage display profiling of CDR3β loops enables machine learning predictions of NY-ESO-1 specific TCRs

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Phage display profiling of CDR3β loops enables machine learning predictions of NY-ESO-1 specific TCRs

Authors

Croce, G.; Lani, R.; Tardivon, D.; Bobisse, S.; de Tiani, M.; Bragina, M.; Perez, M. A.; Schmidt, J.; Guillame, P.; Zoete, V.; Harari, A.; Rufer, N.; Hebeisen, M.; Dunn, S.; Gfeller, D.

Abstract

T cells targeting epitopes in infectious diseases or cancer play a central role in spontaneous and therapy-induced immune responses. T-cell epitope recognition is mediated by the binding of the T-Cell Receptor (TCR) and TCRs recognizing clinically relevant epitopes are promising for T-cell based therapies. Starting from one of the few known TCRs targeting the cancer-testis antigen NY-ESO-1 157-165 epitope, we built large phage display libraries of TCRs with randomized Complementary Determining Region 3 of the {beta} chain. The TCR libraries were panned against the NY-ESO-1 epitope, which enabled us to collect thousands of epitope-specific TCR sequences. We then trained a machine learning TCR-epitope interaction predictor with this data and could identify several epitope-specific TCRs directly from TCR repertoires. Cellular binding and functional assays revealed that the predicted TCRs displayed activity towards the NY-ESO-1 epitope and no detectable cross-reactivity with self-peptides.

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