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TCRep 3D: An Automated In Silico Approach to Study the Structural Properties of TCR Repertoires

机译:TCRep 3D:一种自动化的计算机模拟方法,用于研究TCR曲目的结构特性

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摘要

TCRep 3D is an automated systematic approach for TCR-peptide-MHC class I structure prediction, based on homology and ab initio modeling. It has been considerably generalized from former studies to be applicable to large repertoires of TCR. First, the location of the complementary determining regions of the target sequences are automatically identified by a sequence alignment strategy against a database of TCR Vα and Vβ chains. A structure-based alignment ensures automated identification of CDR3 loops. The CDR are then modeled in the environment of the complex, in an ab initio approach based on a simulated annealing protocol. During this step, dihedral restraints are applied to drive the CDR1 and CDR2 loops towards their canonical conformations, described by Al-Lazikani et. al. We developed a new automated algorithm that determines additional restraints to iteratively converge towards TCR conformations making frequent hydrogen bonds with the pMHC. We demonstrated that our approach outperforms popular scoring methods (Anolea, Dope and Modeller) in predicting relevant CDR conformations. Finally, this modeling approach has been successfully applied to experimentally determined sequences of TCR that recognize the NY-ESO-1 cancer testis antigen. This analysis revealed a mechanism of selection of TCR through the presence of a single conserved amino acid in all CDR3β sequences. The important structural modifications predicted in silico and the associated dramatic loss of experimental binding affinity upon mutation of this amino acid show the good correspondence between the predicted structures and their biological activities. To our knowledge, this is the first systematic approach that was developed for large TCR repertoire structural modeling.
机译:TCRep 3D是基于同源性和从头算建模的TCR-肽-MHC I类结构预测的自动化系统方法。它已从以前的研究中大大推广,以适用于TCR的所有曲目。首先,通过针对TCRVα和Vβ链的数据库的序列比对策略,自动识别靶序列的互补决定区的位置。基于结构的比对可确保自动识别CDR3环。然后,基于模拟退火协议,从头开始,在复合体环境中对CDR进行建模。在这一步骤中,采用二面约束来驱动CDR1和CDR2环趋向于其规范构象,如Al-Lazikani等人所述。等我们开发了一种新的自动化算法,该算法确定了其他约束条件,以迭代地收敛到TCR构象,从而与pMHC形成频繁的氢键。我们证明,在预测相关CDR构象方面,我们的方法优于流行的评分方法(Anolea,Dope和Modeller)。最终,该建模方法已成功地应用于实验确定的识别NY-ESO-1癌症睾丸抗原的TCR序列。该分析揭示了通过在所有CDR3β序列中存在单个保守氨基酸来选择TCR的机制。在计算机上预测的重要结构修饰以及该氨基酸突变后实验结合亲和力的相关显着丧失显示了预测的结构与其生物学活性之间的良好对应关系。据我们所知,这是针对大型TCR曲目库结构建模开发的第一种系统方法。

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