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Assessing the performance of MM/PBSA and MM/GBSA methods. 9. Prediction reliability of binding affinities and binding poses for protein-peptide complexes

机译:评估MM / PBSA和MM / GBSA方法的性能。 9.蛋白质肽复合物结合亲和力和结合姿势的预测可靠性

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A significant number of protein-protein interactions (PPIs) are mediated through the interactions between proteins and peptide segments, and therefore determination of protein-peptide interactions (PpIs) is critical to gain an in-depth understanding of the PPI network and even design peptides or small molecules capable of modulating PPIs. Computational approaches, especially molecular docking, provide an efficient way to model PpIs, and a reliable scoring function that can recognize the correct binding conformations for protein-peptide complexes is one of the most important components in protein-peptide docking. The end-point binding free energy calculation methods, such as MM/GBSA and MM/PBSA, are theoretically more rigorous than most empirical and semi-empirical scoring functions designed for protein-peptide docking, but their performance in predicting binding affinities and binding poses for protein-peptide systems has not been systematically assessed. In this study, we first evaluated the capability of MM/GBSA and MM/PBSA with different solvation models, interior dielectric constants (epsilon(in)) and force fields to predict the binding affinities for 53 protein-peptide complexes. For the 19 short peptides with 5-12 residues, MM/PBSA based on the minimized structures in explicit solvent with the ff99 force field and epsilon(in) = 2 yields the best correlation between the predicted binding affinities and the experimental data (r(p) = 0.748), while for the 34 medium-size peptides with 20-25 residues, MM/GBSA based on 1 ns of molecular dynamics (MD) simulations in implicit solvent with the ff03 force field, the GB(OBC1) model and a low interior dielectric constant (epsilon(in) = 1) yields the best accuracy (r(p) = 0.735). Then, we assessed the rescoring capability of MM/PBSA and MM/GBSA to distinguish the correct binding conformations from the decoys for 112 protein-peptide systems. The results illustrate that MM/PBSA based on the minimized structures with the ff99 or ff14SB force field and MM/GBSA based on the minimized structures with the ff03 force field show excellent capability to recognize the near-native binding poses for the short and medium-size peptides, respectively, and they outperform the predictions given by two popular protein-peptide docking algorithms (pepATTRACT and HPEPDOCK). Therefore, MM/PBSA and MM/GBSA are powerful tools to predict the binding affinities and identify the correct binding poses for protein-peptide systems.
机译:通过蛋白质和肽段之间的相互作用介导大量蛋白质 - 蛋白质相互作用(PPI),因此蛋白质肽相互作用(PPI)的测定对于获得PPI网络甚至设计肽的深入了解至关重要或能够调节PPI的小分子。计算方法,特别是分子对接,为模拟PPI提供有效的方法,并且可以识别用于蛋白质肽复合物的正确结合构象的可靠评分功能是蛋白质肽对接中最重要的组分之一。终点结合可自由能量计算方法,例如mm / gbsa和mm / pbsa,比设计用于蛋白质肽对接的大多数经验和半经验评分功能,但它们在预测结合亲和力和结合姿势方面的性能对于蛋白质肽系统尚未系统地评估。在该研究中,我们首先使用不同的溶剂化模型,内部介电常数(ε(IN))和力场来评估MM / GBSA和MM / PBSA的能力,以预测53个蛋白肽复合物的结合亲和力。对于具有5-12个残基的短肽,基于明确溶剂中的最小结构的MM / PBSA与FF99力场和ε(IN)= 2产生预测结合亲和力与实验数据之间的最佳相关性(R( p)= 0.748),而对于具有20-25个残基的34个中尺寸肽,基于1ns的分子动力学(MD)模拟的MM / GBSA,具有FF03力场,GB(OBC1)模型和低内部介电常数(ε(IN)= 1)产生最佳精度(R(P)= 0.735)。然后,我们评估了MM / PBSA和MM / GBSA的培养能力,以区分来自诱饵的正确的结合构象,用于112个蛋白肽系统。结果说明了基于具有FF99或FF14SB力场的最小结构的MM / PBSA和基于具有FF03力场的最小结构的MM / GBSA显示出优异的能力,以识别短语和中学的近似天然绑定姿势分别肽,它们优于两种普遍的蛋白肽对接算法(PepaTtract和HPepdock)给出的预测。因此,MM / PBSA和MM / GBSA是预测结合亲和力的强大工具,并鉴定蛋白质肽系统的正确结合姿势。

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    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

    Zhejiang Univ Coll Pharmaceut Sci Hangzhou 310058 Zhejiang Peoples R China;

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  • 正文语种 eng
  • 中图分类 物理学;化学;
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