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Critical Features of Fragment Libraries for Protein Structure Prediction

机译:用于蛋白质结构预测的片段库的关键特征

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摘要

The use of fragment libraries is a popular approach among protein structure prediction methods and has proven to substantially improve the quality of predicted structures. However, some vital aspects of a fragment library that influence the accuracy of modeling a native structure remain to be determined. This study investigates some of these features. Particularly, we analyze the effect of using secondary structure prediction guiding fragments selection, different fragments sizes and the effect of structural clustering of fragments within libraries. To have a clearer view of how these factors affect protein structure prediction, we isolated the process of model building by fragment assembly from some common limitations associated with prediction methods, e.g., imprecise energy functions and optimization algorithms, by employing an exact structure-based objective function under a greedy algorithm. Our results indicate that shorter fragments reproduce the native structure more accurately than the longer. Libraries composed of multiple fragment lengths generate even better structures, where longer fragments show to be more useful at the beginning of the simulations. The use of many different fragment sizes shows little improvement when compared to predictions carried out with libraries that comprise only three different fragment sizes. Models obtained from libraries built using only sequence similarity are, on average, better than those built with a secondary structure prediction bias. However, we found that the use of secondary structure prediction allows greater reduction of the search space, which is invaluable for prediction methods. The results of this study can be critical guidelines for the use of fragment libraries in protein structure prediction.
机译:片段文库的使用是蛋白质结构预测方法中的一种流行方法,并且已证明可以大大提高预测结构的质量。但是,片段库中影响建模本机结构准确性的一些重要方面仍有待确定。这项研究调查了其中一些功能。特别是,我们分析了使用二级结构预测指导片段选择,不同片段大小以及库中片段结构聚类的效果。为了更清楚地了解这些因素如何影响蛋白质结构预测,我们通过采用基于结构的精确目标,将片段组装的建模过程与一些与预测方法相关的常见限制(例如,不精确的能量函数和优化算法)隔离开来贪婪算法下的函数。我们的结果表明,较短的片段比较长的片段更准确地再现天然结构。由多个片段长度组成的库会生成更好的结构,其中更长的片段在模拟开始时显示出更多的用处。与仅包含三个不同片段大小的文库进行的预测相比,使用许多不同片段大小显示的改进很小。平均而言,从仅使用序列相似性构建的库中获得的模型要好于使用二级结构预测偏差构建的模型。但是,我们发现使用二级结构预测可以更大程度地减少搜索空间,这对于预测方法而言是无价的。这项研究的结果可以作为在蛋白质结构预测中使用片段库的关键指导。

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