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首页> 外文期刊>Proteins: Structure, Function, and Genetics >Ab initio construction of polypeptide fragments: Accuracy of loop decoy discrimination by an all-atom statistical potential and the AMBER force field with the Generalized Born solvation model.
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Ab initio construction of polypeptide fragments: Accuracy of loop decoy discrimination by an all-atom statistical potential and the AMBER force field with the Generalized Born solvation model.

机译:从头开始构建多肽片段:通过全原子统计势和具有广义Born溶剂化模型的AMBER力场来判别环诱饵的准确性。

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The accuracy of model selection from decoy ensembles of protein loop conformations was explored by comparing the performance of the Samudrala-Moult all-atom statistical potential (RAPDF) and the AMBER molecular mechanics force field, including the Generalized Born/surface area solvation model. Large ensembles of consistent loop conformations, represented at atomic detail with idealized geometry, were generated for a large test set of protein loops of 2 to 12 residues long by a novel ab initio method called RAPPER that relies on fine-grained residue-specific phi/psi propensity tables for conformational sampling. Ranking the conformers on the basis of RAPDF scores resulted in selected conformers that had an average global, non-superimposed RMSD for all heavy mainchain atoms ranging from 1.2 A for 4-mers to 2.9 A for 8-mers to 6.2 A for 12-mers. After filtering on the basis of anchor geometry and RAPDF scores, ranking by energy minimization of the AMBER/GBSA potential energy function selected conformers that had global RMSD values of 0.5 A for 4-mers, 2.3 A for 8-mers, and 5.0 A for 12-mers. Minimized fragments had, on average, consistently lower RMSD values (by 0.1 A) than their initial conformations. The importance of the Generalized Born solvation energy term is reflected by the observation that the average RMSD accuracy for all loop lengths was worse when this term is omitted. There are, however, still many cases where the AMBER gas-phase minimization selected conformers of lower RMSD than the AMBER/GBSA minimization. The AMBER/GBSA energy function had better correlation with RMSD to native than the RAPDF. When the ensembles were supplemented with conformations extracted from experimental structures, a dramatic improvement in selection accuracy was observed at longer lengths (average RMSD of 1.3 A for 8-mers) when scoring with the AMBER/GBSA force field. This work provides the basis for a promising hybrid approach of ab initio and knowledge-based methods for loop modeling.
机译:通过比较Samudrala-Moult全原子统计势(RAPDF)和AMBER分子力学力场(包括广义Born /表面积溶剂化模型)的性能,探索了从蛋白质环构象的诱饵集合中选择模型的准确性。通过一种称为RAPPER的新颖的从头算方法,该方法可以依靠2到12个残基的大型蛋白质环测试集生成一致的环状构象,以理想的几何形状表示,该循环依赖细粒度的残基特异性phi / psi倾向表进行构象抽样。根据RAPDF分数对构象异构体进行排序,得出的所选构象异构体的所有重链主原子的平均全局非叠加RMSD,范围从4-A的1.2 A至8-mers的2.9 A至12-mers的6.2 A 。在根据锚点几何形状和RAPDF分数进行过滤后,通过最小化AMBER / GBSA势能函数的能量对所选择的构象异构体进行分析,这些构象异构体的全局RMSD值对于4聚体为0.5 A,对于8聚体为2.3 A,对于5聚体为5.0A。 12聚体。平均而言,最小化片段的RMSD值始终比其初始构象低(0.1 A)。广义玻恩溶剂化能量项的重要性体现在以下观察结果:当省略该项时,所有环长度的平均RMSD精度均较差。但是,在许多情况下,AMBER气相最小化选择的RMSD低于AMBER / GBSA最小化的构象。与RAPDF相比,AMBER / GBSA能量函数与RMSD与本机的相关性更好。当向乐团添加从实验结构中提取的构象时,在用AMBER / GBSA力场评分时,在更长的长度(8聚体的平均RMSD为1.3 A)下观察到选择准确性的显着提高。这项工作为从头开始和基于知识的环路建模混合方法提供了有希望的基础。

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