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Coupling In Silico and In Vitro Analysis of Peptide-MHC Binding: A Bioinformatic Approach Enabling Prediction of Superbinding Peptides and Anchorless Epitopes

机译:偶联的计算机和肽-MHC结合的体外分析:一种能够预测超结合肽和无锚表位的生物信息学方法。

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The ability to define and manipulate the interaction of peptides with MHC molecules has immense immunological utility, with applications in epitope identification, vaccine design, and immunomodulation. However, the methods currently available for prediction of peptide-MHC binding are far from ideal. We recently described the application of a bioinformatic prediction method based on quantitative structure-affinity relationship methods to peptide-MHC binding. In this study we demonstrate the predictivity and utility of this approach. We determined the binding affinities of a set of 90 nonamer peptides for the MHC class I allele HLA-A*0201 using an in-house, FACS-based, MHC stabilization assay, and from these data we derived an additive quantitative structure-affinity relationship model for peptide interaction with the HLA-A*0201 molecule. Using this model we then designed a series of high affinity HLA-A2-binding peptides. Experimental analysis revealed that all these peptides showed high binding affinities to the HLA-A*0201 molecule, significantly higher than the highest previously recorded. In addition, by the use of systematic substitution at principal anchor positions 2 and 9, we showed that high binding peptides are tolerant to a wide range of nonpreferred amino acids. Our results support a model in which the affinity of peptide binding to MHC is determined by the interactions of amino acids at multiple positions with the MHC molecule and may be enhanced by enthalpic cooperativity between these component interactions.
机译:定义和操纵肽与MHC分子相互作用的能力具有巨大的免疫学实用性,可用于表位鉴定,疫苗设计和免疫调节。然而,目前可用于预测肽-MHC结合的方法远非理想。我们最近描述了基于定量结构亲和关系方法的生物信息学预测方法在肽-MHC结合中的应用。在这项研究中,我们证明了这种方法的可预测性和实用性。我们使用内部基于FACS的MHC稳定化测定方法确定了一组90种九聚体肽与MHC I类等位基因HLA-A * 0201的结合亲和力,并且从这些数据中我们得出了加和的定量结构亲和关系肽与HLA-A * 0201分子相互作用的模型。然后,使用该模型,我们设计了一系列高亲和力HLA-A2结合肽。实验分析表明,所有这些肽均显示出对HLA-A * 0201分子的高结合亲和力,远高于先前记录的最高亲和力。此外,通过在主要锚定位置2和9处使用系统取代,我们显示高结合肽可耐受多种非优选氨基酸。我们的结果支持了一个模型,其中肽与MHC的亲和力由多个位置的氨基酸与MHC分子的相互作用决定,并且可以通过这些组分相互作用之间的焓协同作用而增强。

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