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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Predicting the effects of amino acid replacements in peptide hormones on their binding affinities for class B GPCRs and application to the design of secretin receptor antagonists
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Predicting the effects of amino acid replacements in peptide hormones on their binding affinities for class B GPCRs and application to the design of secretin receptor antagonists

机译:预测肽激素中氨基酸替代对其B类GPCR结合亲和力的影响及其在促胰液素受体拮抗剂设计中的应用

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Computational prediction of the effects of residue changes on peptide-protein binding affinities, followed by experimental testing of the top predicted binders, is an efficient strategy for the rational structure-based design of peptide inhibitors. In this study we apply this approach to the discovery of competitive antagonists for the secretin receptor, the prototypical member of class B G protein-coupled receptors (GPCRs). Proteins in this family are involved in peptide hormone-stimulated signaling and are implicated in several human diseases, making them potential therapeutic targets. We first validated our computational method by predicting changes in the binding affinities of several peptides to their cognate class B GPCRs due to alanine replacement and compared the results with previously published experimental values. Overall, the results showed a significant correlation between the predicted and experimental ΔΔG values. Next, we identified candidate inhibitors by applying this method to a homology model of the secretin receptor bound to an N-terminal truncated secretin peptide. Predictions were made for single residue replacements to each of the other nineteen naturally occurring amino acids at peptide residues within the segment binding the receptor N-terminal domain. Amino acid replacements predicted to most enhance receptor binding were then experimentally tested by competition-binding assays. We found two residue changes that improved binding affinities by almost one log unit. Furthermore, a peptide combining both of these favorable modifications resulted in an almost two log unit improvement in binding affinity, demonstrating the approximately additive effect of these changes on binding. In order to further investigate possible physical effects of these residue changes on receptor binding affinity, molecular dynamics simulations were performed on representatives of the successful peptide analogues (namely A17I, G25R, and A17I/G25R) in bound and unbound forms. These simulations suggested that a combination of the α-helical propensity of the unbound peptide and specific interactions between the peptide and the receptor extracellular domain contribute to their higher binding affinities.
机译:残基变化对肽-蛋白质结合亲和力影响的计算预测,然后对顶部预测的结合物进行实验测试,是基于肽的合理结构设计的有效策略。在这项研究中,我们将这种方法用于发现促胰液素受体的竞争性拮抗剂,促胰液素受体是B类G蛋白偶联受体(GPCR)的典型成员。该家族中的蛋白质参与肽激素刺激的信号转导,并涉及多种人类疾病,使其成为潜在的治疗靶标。我们首先通过预测几种肽由于丙氨酸置换而与其同源的B类GPCR结合亲和力的变化来验证我们的计算方法,并将结果与​​先前发表的实验值进行比较。总体而言,结果显示预测的和实验的ΔΔG值之间存在显着的相关性。接下来,我们通过将该方法应用于与N端截短的促胰液素肽结合的促胰液素受体的同源性模型中,鉴定了候选抑制剂。预测在结合受体N-末端结构域的片段内的肽残基处的单个十九个天然残基中的每个氨基酸的残基置换。然后,通过竞争结合试验对预计可最大程度增强受体结合的氨基酸替代物进行了实验测试。我们发现了两个残基变化,将结合亲和力提高了近一个对数单位。此外,结合了这两个有利修饰的肽导致结合亲和力提高了近两个对数单位,证明了这些改变对结合的近似加和作用。为了进一步研究这些残基变化对受体结合亲和力的可能的物理影响,对结合和未结合形式的成功肽类似物(即A17I,G25R和A17I / G25R)的代表进行了分子动力学模拟。这些模拟表明,未结合的肽的α-螺旋倾向以及该肽与受体胞外域之间的特异性相互作用的组合有助于它们更高的结合亲和力。

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