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Toward a detailed understanding of search trajectories in fragment assembly approaches to protein structure prediction

机译:对片段装配方法中蛋白质结构预测的搜索轨迹的详细理解

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摘要

Energy functions, fragment libraries, and search methods constitute three key components of fragment-assembly methods for protein structure prediction, which are all crucial for their ability to generate high-accuracy predictions. All of these components are tightly coupled; efficient searching becomes more important as the quality of fragment libraries decreases. Given these relationships, there is currently a poor understanding of the strengths and weaknesses of the sampling approaches currently used in fragment-assembly techniques. Here, we determine how the performance of search techniques can be assessed in a meaningful manner, given the above problems. We describe a set of techniques that aim to reduce the impact of the energy function, and assess exploration in view of the search space defined by a given fragment library. We illustrate our approach using Rosetta and EdaFold, and show how certain features of these methods encourage or limit conformational exploration. We demonstrate that individual trajectories of Rosetta are susceptible to local minima in the energy landscape, and that this can be linked to non-uniform sampling across the protein chain. We show that EdaFold's novel approach can help balance broad exploration with locating good low-energy conformations. This occurs through two mechanisms which cannot be readily differentiated using standard performance measures: exclusion of false minima, followed by an increasingly focused search in low-energy regions of conformational space. Measures such as ours can be helpful in characterizing new fragment-based methods in terms of the quality of conformational exploration realized. Proteins 2016; 84:411-426. (c) 2016 Wiley Periodicals, Inc.
机译:能量函数,片段库和搜索方法构成了用于蛋白质结构预测的片段装配方法的三个关键组成部分,它们对于生成高精度预测的能力都是至关重要的。所有这些组件都紧密耦合。随着片段库质量的下降,有效的搜索变得越来越重要。考虑到这些关系,目前对片段组装技术中目前使用的采样方法的优缺点知之甚少。在此,鉴于上述问题,我们确定如何以有意义的方式评估搜索技术的性能。我们描述了一套旨在减少能量函数影响的技术,并根据给定的片段库定义的搜索空间评估勘探。我们将说明使用Rosetta和EdaFold的方法,并说明这些方法的某些功能如何鼓励或限制构象探索。我们证明了罗塞塔的各个轨迹在能量景​​观中易受局部极小值的影响,并且可以将其链接到整个蛋白质链上的非均匀采样。我们证明,EdaFold的新颖方法可以帮助在广泛探索与定位良好的低能量构象之间取得平衡。这是通过两种机制进行的,这两种机制无法使用标准的性能指标轻松区分:排除错误的最小值,然后在构象空间的低能区域中进行越来越集中的搜索。就实现的构象探索质量而言,诸如我们的措施可能有助于表征基于片段的新方法。蛋白质2016; 84:411-426。 (c)2016年威利期刊有限公司

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