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Nonbonded terms extrapolated from nonlocal knowledge-based energy functions improve error detection in near-native protein structure models

机译:通过基于非局部知识的能量函数外推的非键合项改善了近天然蛋白质结构模型中的错误检测

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摘要

The accurate assessment of structural errors plays a key role in protein structure prediction, constitutes the first step of protein structure refinement, and has a major impact on subsequent functional inference from structural data. In this study, we assess and compare the ability of different full atom knowledge-based potentials to detect small and localized errors in comparative protein structure models of known accuracy. We have evaluated the effect of incorporating close nonbonded pairwise atom terms on the task of classifying residue modeling accuracy. Since the direct and unbiased derivation of close nonbonded terms from current experimental data is not possible, we extrapolated those terms from the corresponding pseudo-energy functions of a nonlocal knowledge-based potential. It is shown that this methodology clearly improves the detection of errors in protein models, suggesting that a proper description of close nonbonded terms is important to achieve a more complete and accurate description of native protein conformations. The use of close nonbonded terms directly derived from experimental data exhibited a poor performance, demonstrating that these terms cannot be accurately obtained by using the current data and methodology. Some external knowledge-based energy functions that are widely used in model assessment also performed poorly, which suggests that the benchmark of models and the specific error detection task tested in this study constituted a difficult challenge. The methodology presented here could be useful to detect localized structural errors not only in high-quality protein models, but also in experimental protein structures.
机译:对结构错误的准确评估在蛋白质结构预测中起着关键作用,构成了蛋白质结构细化的第一步,并且对随后从结构数据推断功能产生重大影响。在这项研究中,我们评估和比较不同的基于全原子知识的电势在已知准确度的比较蛋白质结构模型中检测微小和局部错误的能力。我们已经评估了结合紧密的非键对原子项目对残基建模精度分类任务的影响。由于不可能从当前的实验数据中直接无偏地推导紧密的非键合项,因此我们从非本地知识型势能的相应伪能量函数中推断出这些项。结果表明,该方法学明显改善了蛋白质模型错误的检测,表明正确地描述非键合紧密术语对于获得更完整和准确的天然蛋白质构象描述很重要。直接从实验数据获得的紧密非键合术语的使用表现出较差的性能,这表明使用当前数据和方法无法准确获得这些术语。在模型评估中广泛使用的一些基于外部知识的能量函数也表现不佳,这表明模型基准和本研究中测试的特定错误检测任务构成了艰巨的挑战。此处介绍的方法不仅可用于检测高质​​量蛋白质模型中的局部结构错误,而且可用于实验性蛋白质结构中。

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