剧目
T细胞受体
主要组织相容性复合体
免疫系统
计算生物学
生物
抗原
免疫疗法
成对比较
T细胞
免疫学
计算机科学
人工智能
声学
物理
作者
Xingcheng Lin,Jason T. George,Nicholas P. Schafer,Kevin Ng Chau,Michael E. Birnbaum,Cecilia Clementi,José N. Onuchic,Herbert Levine
标识
DOI:10.1101/2020.04.06.028415
摘要
Abstract Accurate assessment of TCR-antigen specificity at the whole immune repertoire level lies at the heart of improved cancer immunotherapy, but predictive models capable of high-throughput assessment of TCR-peptide pairs are lacking. Recent advances in deep sequencing and crystallography have enriched the data available for studying TCR-p-MHC systems. Here, we introduce a pairwise energy model, RACER, for rapid assessment of TCR-peptide affinity at the immune repertoire level. RACER applies supervised machine learning to efficiently and accurately resolve strong TCR-peptide binding pairs from weak ones. The trained parameters further enable a physical interpretation of interacting patterns encoded in each specific TCR-p-MHC system. When applied to simulate thymic selection of an MHC-restricted T-cell repertoire, RACER accurately estimates recognition rates for tumor-associated neoantigens and foreign peptides, thus demonstrating its utility in helping address the large computational challenge of reliably identifying the properties of tumor antigen-specific T-cells at the level of an individual patient’s immune repertoire.
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