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All-Atom Four-Body Knowledge-Based Statistical Potentials to Distinguish Native Protein Structures from Nonnative Folds

机译:基于全原子四体知识的统计潜能从非自然折叠中区分天然蛋白质结构

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摘要

Recent advances in understanding protein folding have benefitted from coarse-grained representations of protein structures. Empirical energy functions derived from these techniques occasionally succeed in distinguishing native structures from their corresponding ensembles of nonnative folds or decoys which display varying degrees of structural dissimilarity to the native proteins. Here we utilized atomic coordinates of single protein chains, comprising a large diverse training set, to develop and evaluate twelve all-atom four-body statistical potentials obtained by exploring alternative values for a pair of inherent parameters. Delaunay tessellation was performed on the atomic coordinates of each protein to objectively identify all quadruplets of interacting atoms, and atomic potentials were generated via statistical analysis of the data and implementation of the inverted Boltzmann principle. Our potentials were evaluated using benchmarking datasets from Decoys-‘R'-Us, and comparisons were made with twelve other physics- and knowledge-based potentials. Ranking 3rd, our best potential tied CHARMM19 and surpassed AMBER force field potentials. We illustrate how a generalized version of our potential can be used to empirically calculate binding energies for target-ligand complexes, using HIV-1 protease-inhibitor complexes for a practical application. The combined results suggest an accurate and efficient atomic four-body statistical potential for protein structure prediction and assessment.
机译:理解蛋白质折叠的最新进展得益于蛋白质结构的粗粒度表示。从这些技术中获得的经验能量函数有时会成功地将天然结构与它们对应的非天然折叠或诱饵集合区分开来,这些折叠显示出与天然蛋白质不同程度的结构差异。在这里,我们利用包含大量不同训练集的单个蛋白质链的原子坐标来开发和评估十二种全原子四体统计潜力,这些潜力是通过探索一对固有参数的替代值而获得的。在每种蛋白质的原子坐标上进行Delaunay细分,以客观地识别相互作用原子的所有四倍体,并通过对数据进行统计分析和实施反向玻耳兹曼原理产生原子势。我们使用Decoys-'R'-Us的基准数据集评估了我们的潜力,并与其他十二种基于物理和知识的潜力进行了比较。排名第三的是我们的最佳电势,与CHARMM19并列,超过了AMBER力场电势。我们说明了如何使用我们的潜力的广义形式,根据经验将HIV-1蛋白酶抑制剂复合物用于经验计算靶配体复合物的结合能。合并的结果表明,准确,有效的原子四体统计潜力可用于蛋白质结构的预测和评估。

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