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Efficient Sampling of Protein Loop Regions Using Conformational Hashing Complemented with Random Coordinate Descent

机译:使用一致性散列互动的蛋白质环路区域的高效采样,随机坐标血统补充

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De novo construction of loop regions is an important problem in computational structural biology. Compared to regions with well-defined secondary structure, loops tend to exhibit significant conformational heterogeneity. As a result, their structures are often ambiguous when determined using experimental data obtained by crystallography, cryo-EM, or NMR. Although structurally diverse models could provide a more relevant representation of proteins in their native states, obtaining large numbers of biophysically realistic and physiologically relevant loop conformations is a resource-consuming task. To address this need, we developed a novel loop construction algorithm, Hash/RCD, that combines knowledge-based conformational hashing with random coordinate descent (RCD). This hybrid approach achieved a closure rate of 100% on a benchmark set of 195 loops in 29 proteins that range from 3 to 31 residues. More importantly, the use of templates allows Hash/RCD to maintain the accuracy of state-of-the-art coordinate descent methods while reducing sampling time from over 400 to 141 ms. These results highlight how the integration of coordinate descent with knowledge-based sampling overcomes barriers inherent to either approach in isolation. This method may facilitate the identification of native-like loop conformations using experimental data or full-atom scoring functions by allowing rapid sampling of large numbers of loops. In this manuscript, we investigate and discuss the advantages, bottlenecks, and limitations of combining conformational hashing with RCD. By providing a detailed technical description of the Hash/RCD algorithm, we hope to facilitate its implementation by other researchers.
机译:环区的从头构造是计算结构生物学中的一个重要问题。与具有明确二级结构的区域相比,环往往表现出显著的构象异质性。因此,当使用通过结晶学、低温EM或NMR获得的实验数据来确定它们的结构时,它们往往是不明确的。尽管结构多样的模型可以提供蛋白质在其自然状态下更相关的表示,但获得大量生物物理上真实且生理上相关的环构象是一项消耗资源的任务。为了满足这一需求,我们开发了一种新的循环构造算法Hash/RCD,它将基于知识的构象Hash与随机坐标下降(RCD)相结合。这种混合方法在29种蛋白质(3到31个残基)的195个环的基准集上实现了100%的闭合率。更重要的是,模板的使用允许哈希/RCD保持最先进的坐标下降方法的准确性,同时将采样时间从400多毫秒减少到141毫秒。这些结果突显了坐标下降与基于知识的采样的集成如何克服这两种方法各自固有的障碍。这种方法可以通过实验数据或全原子计分函数快速采样大量环,从而有助于识别类天然环构象。在这篇手稿中,我们调查和讨论了构象哈希与RCD相结合的优势、瓶颈和局限性。我们希望通过对RCD算法的详细描述,方便其他研究人员对其进行实现。

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