TRAIT: t细胞受体-抗原相互作用的综合数据库。

Mengmeng Wei, Jingcheng Wu, Shengzuo Bai, Yuxuan Zhou, Yichang Chen, Xue Zhang, Wenyi Zhao, Ying Chi, Gang Pan, Feng Zhu, Shuqing Chen, Zhan Zhou
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引用次数: 0

摘要

关于t细胞受体(tcr)和抗原之间相互作用的全面和整合的资源仍然缺乏过继性t细胞免疫疗法,这突出了必须解决的重大空白,以充分了解t细胞识别抗原的机制。在这项研究中,我们提出了t细胞受体-抗原相互作用数据库(TRAIT),这是一个全面的数据库,描述了tcr和抗原之间的相互作用。TRAIT因其通过整合序列、结构和亲和力来全面描述tcr -抗原相互作用而脱颖而出。它提供了数百万个经过实验验证的tcr -抗原对,从而形成了抗原特异性tcr的详尽图景。值得注意的是,TRAIT强调单细胞组学是tcr -抗原相互作用的主要可靠数据源,包括数百万个可靠的非相互作用tcr。此外,它还充分展示了TCRs突变与抗原之间的相互作用,从而有利于工程TCRs的亲和成熟以及疫苗设计。创新提供临床试验tcr。随着人们在阐明tcr和抗原之间复杂相互作用方面所做的重大努力,预计TRAIT最终将在基于t细胞的免疫治疗领域贡献卓越的算法和实质性进展。TRAIT可以在https://pgx.zju.edu.cn/traitdb免费访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRAIT: A Comprehensive Database for T-cell Receptor-Antigen Interactions.

Comprehensive and integrated resources on interactions between T-cell receptors (TCRs) and antigens are still lacking for adoptive T-cell-based immunotherapies, highlighting a significant gap that must be addressed to fully comprehend the mechanisms of antigen recognition by T-cells. In this study, we present the T-cell receptor-antigen interaction database (TRAIT), a comprehensive database that profiles the interactions between TCRs and antigens. TRAIT stands out due to its comprehensive description of TCR-antigen interactions by integrating sequences, structures, and affinities. It provides millions of experimentally validated TCR-antigen pairs, resulting in an exhaustive landscape of antigen-specific TCRs. Notably, TRAIT emphasizes single-cell omics as a major reliable data source for TCR-antigen interactions and includes millions of reliable non-interactive TCRs. Additionally, it thoroughly demonstrates the interactions between mutations of TCRs and antigens, thereby benefiting affinity maturation of engineered TCRs as well as vaccine design. TCRs on clinical trials were innovatively provided. With the significant efforts made towards elucidating the complex interactions between TCRs and antigens, TRAIT is expected to ultimately contribute superior algorithms and substantial advancements in the field of T-cell-based immunotherapies. TRAIT is freely accessible at https://pgx.zju.edu.cn/traitdb.

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