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Applying Physics-Based Scoring to Calculate Free Energies of Binding for Single Amino Acid Mutations in Protein-Protein Complexes

机译:应用基于物理的计分法来计算蛋白质-蛋白质复合物中单个氨基酸突变的结合自由能

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摘要

Predicting changes in protein binding affinity due to single amino acid mutations helps us better understand the driving forces underlying protein-protein interactions and design improved biotherapeutics. Here, we use the MM-GBSA approach with the OPLS2005 force field and the VSGB2.0 solvent model to calculate differences in binding free energy between wild type and mutant proteins. Crucially, we made no changes to the scoring model as part of this work on protein-protein binding affinity—the energy model has been developed for structure prediction and has previously been validated only for calculating the energetics of small molecule binding. Here, we compare predictions to experimental data for a set of 418 single residue mutations in 21 targets and find that the MM-GBSA model, on average, performs well at scoring these single protein residue mutations. Correlation between the predicted and experimental change in binding affinity is statistically significant and the model performs well at picking “hotspots,” or mutations that change binding affinity by more than 1 kcal/mol. The promising performance of this physics-based method with no tuned parameters for predicting binding energies suggests that it can be transferred to other protein engineering problems.
机译:预测由于单个氨基酸突变引起的蛋白质结合亲和力的变化,有助于我们更好地了解蛋白质与蛋白质相互作用的潜在驱动力,并设计出改良的生物疗法。在这里,我们将MM-GBSA方法与OPLS2005力场和VSGB2.0溶剂模型一起使用,以计算野生型和突变蛋白之间结合自由能的差异。至关重要的是,作为这项蛋白质-蛋白质结合亲和力工作的一部分,我们没有对评分模型进行任何更改-能量模型已开发用于结构预测,并且以前仅在计算小分子结合能方面经过验证。在这里,我们将21个目标中一组418个单残基突变的预测结果与实验数据进行比较,发现MM-GBSA模型平均在对这些单蛋白残基突变进行评分时表现良好。结合亲和力的预测变化与实验变化之间的相关性在统计上显着,并且该模型在选择“热点”或使结合亲和力变化超过1 kcal / mol的突变时表现良好。这种基于物理方法的前景广阔的性能,无需调整参数即可预测结合能,这表明它可以转移到其他蛋白质工程问题上。

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