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Backbone dependency further improves side chain prediction efficiency in the Energy-Based Conformer Library (bEBL)

机译:骨干依赖性进一步提高了基于能量的合格者库(bEBL)中的侧链预测效率

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摘要

Side chain optimization is an integral component of many protein modeling applications. In these applications, the conformational freedom of the side chains is often explored using libraries of discrete, frequently occurring conformations. Because side chain optimization can pose a computationally intensive combinatorial problem, the nature of these conformer libraries is important for ensuring efficiency and accuracy in side chain prediction. We have previously developed an innovative method to create a conformer library with enhanced performance. The Energy-Based Library (EBL) was obtained by analyzing the energetic interactions between conformers and a large number of natural protein environments from crystal structures. This process guided the selection of conformers with the highest propensity to fit into spaces that should accommodate a side chain. Because the method requires a large crystallographic data-set, the EBL was created in a backbone-independent fashion. However, it is well established that side chain conformation is strongly dependent on the local backbone geometry, and that backbone-dependent libraries are more efficient in side chain optimization. Here we present a backbone-dependent version of the EBL, the bEBL, whose conformers are independently sorted for each populated region of Ramachandran space. The resulting library closely mirrors the local backbone-dependent distribution of side chain conformation. Compared to the EBL, we demonstrate that the bEBL uses fewer conformers to produce similar side chain prediction outcomes, thus further improving performance with respect to the already efficient backbone-independent version of the library.
机译:侧链优化是许多蛋白质建模应用程序不可或缺的组成部分。在这些应用中,经常使用离散的,经常出现的构象库来探索侧链的构象自由度。因为侧链优化可能会带来计算量大的组合问题,所以这些构象程序库的性质对于确保侧链预测的效率和准确性很重要。以前,我们已经开发出一种创新的方法来创建具有增强性能的构象库。基于能量的库(EBL)是通过分析构象异构体与大量晶体结构天然蛋白质环境之间的能量相互作用而获得的。这个过程指导了选择最适合于容纳侧链的空间的构型异构体。因为该方法需要大量的晶体学数据集,所以以与骨架无关的方式创建了EBL。但是,众所周知,侧链构象强烈依赖于局部骨架结构,并且骨架依赖的库在侧链优化中更有效。在这里,我们介绍了EBL的依赖于主干的版本,即bEBL,其构象子是针对Ramachandran空间的每个人口稠密区域进行独立排序的。生成的库紧密反映了侧链构象的局部骨架依赖性分布。与EBL相比,我们证明了bEBL使用更少的构象异构体来产生相似的侧链预测结果,从而相对于已经高效的与骨架无关的库版本,进一步提高了性能。

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