A framework for highly multiplexed dextramer mapping and prediction of T cell receptor sequences to antigen specificity

用于高通量葡聚糖四聚体映射和预测T细胞受体序列与抗原特异性的框架

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作者:Wen Zhang ,Peter G Hawkins ,Jing He ,Namita T Gupta ,Jinrui Liu ,Gabrielle Choonoo ,Se W Jeong ,Calvin R Chen ,Ankur Dhanik ,Myles Dillon ,Raquel Deering ,Lynn E Macdonald ,Gavin Thurston ,Gurinder S Atwal

Abstract

T cell receptor (TCR) antigen-specific recognition is essential for the adaptive immune system. However, building a TCR-antigen interaction map has been challenging due to the staggering diversity of TCRs and antigens. Accordingly, highly multiplexed dextramer-TCR binding assays have been recently developed, but the utility of the ensuing large datasets is limited by the lack of robust computational methods for normalization and interpretation. Here, we present a computational framework comprising a novel method, ICON (Integrative COntext-specific Normalization), for identifying reliable TCR-pMHC (peptide-major histocompatibility complex) interactions and a neural network-based classifier TCRAI that outperforms other state-of-the-art methods for TCR-antigen specificity prediction. We further demonstrated that by combining ICON and TCRAI, we are able to discover novel subgroups of TCRs that bind to a given pMHC via different mechanisms. Our framework facilitates the identification and understanding of TCR-antigen-specific interactions for basic immunological research and clinical immune monitoring.

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