NetTCR-2.0 enables accurate prediction of TCR-peptide binding by using paired TCRα and β sequence data
Alessandro Montemurro(Technical University of Denmark), Morten Nielsen(Technical University of Denmark), Bjoern Peters(La Jolla Institute for Immunology), Helle Rus Povlsen(Technical University of Denmark), Sine Reker Hadrup(Herlev Hospital), William D. Chronister(Teikoku Pharma (United States)), Leon Eyrich Jessen(Technical University of Denmark), Amalie Kai Bentzen(Technical University of Denmark), Ole Winther(University of Copenhagen), Austin Crinklaw(La Jolla Institute for Immunology), Vanessa Jurtz(Technical University of Denmark), Viktoria Schuster(Technical University of Denmark)
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