Pierce Brian G, Hellman Lance M, Hossain Moushumi, Singh Nishant K, Vander Kooi Craig W, Weng Zhiping, Baker Brian M
Program in Bioinformatics and Integrative Biology, University of Massachusetts Medical School, Worcester, Massachusetts, United States of America.
Department of Chemistry and Biochemistry, University of Notre Dame, Notre Dame, Indiana, United States of America.
PLoS Comput Biol. 2014 Feb 13;10(2):e1003478. doi: 10.1371/journal.pcbi.1003478. eCollection 2014 Feb.
T cell receptors (TCRs) are key to antigen-specific immunity and are increasingly being explored as therapeutics, most visibly in cancer immunotherapy. As TCRs typically possess only low-to-moderate affinity for their peptide/MHC (pMHC) ligands, there is a recognized need to develop affinity-enhanced TCR variants. Previous in vitro engineering efforts have yielded remarkable improvements in TCR affinity, yet concerns exist about the maintenance of peptide specificity and the biological impacts of ultra-high affinity. As opposed to in vitro engineering, computational design can directly address these issues, in theory permitting the rational control of peptide specificity together with relatively controlled increments in affinity. Here we explored the efficacy of computational design with the clinically relevant TCR DMF5, which recognizes nonameric and decameric epitopes from the melanoma-associated Melan-A/MART-1 protein presented by the class I MHC HLA-A2. We tested multiple mutations selected by flexible and rigid modeling protocols, assessed impacts on affinity and specificity, and utilized the data to examine and improve algorithmic performance. We identified multiple mutations that improved binding affinity, and characterized the structure, affinity, and binding kinetics of a previously reported double mutant that exhibits an impressive 400-fold affinity improvement for the decameric pMHC ligand without detectable binding to non-cognate ligands. The structure of this high affinity mutant indicated very little conformational consequences and emphasized the high fidelity of our modeling procedure. Overall, our work showcases the capability of computational design to generate TCRs with improved pMHC affinities while explicitly accounting for peptide specificity, as well as its potential for generating TCRs with customized antigen targeting capabilities.
T细胞受体(TCR)是抗原特异性免疫的关键,并且越来越多地被开发用作治疗药物,在癌症免疫治疗中最为显著。由于TCR通常对其肽/MHC(pMHC)配体仅具有低至中等亲和力,因此人们认识到需要开发亲和力增强的TCR变体。以前的体外工程努力已经在TCR亲和力方面取得了显著改善,但对于肽特异性的维持以及超高亲和力的生物学影响仍存在担忧。与体外工程不同,计算设计可以直接解决这些问题,理论上允许合理控制肽特异性以及相对可控的亲和力增加。在这里,我们探索了使用临床相关的TCR DMF5进行计算设计的效果,该TCR识别由I类MHC HLA-A2呈递的黑色素瘤相关Melan-A/MART-1蛋白的九聚体和十聚体表位。我们测试了通过灵活和刚性建模协议选择的多个突变,评估了对亲和力和特异性的影响,并利用这些数据来检查和改进算法性能。我们鉴定出多个改善结合亲和力的突变,并表征了先前报道的双突变体的结构、亲和力和结合动力学,该双突变体对十聚体pMHC配体表现出令人印象深刻的400倍亲和力提高,而未检测到与非同源配体的结合。这种高亲和力突变体的结构显示出很少的构象变化,并强调了我们建模过程的高保真度。总体而言,我们的工作展示了计算设计在生成具有改善的pMHC亲和力的TCR同时明确考虑肽特异性的能力,以及其生成具有定制抗原靶向能力的TCR的潜力。