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EFFECTIVE OPTIMIZATION ALGORITHMS FOR FRAGMENT-ASSEMBLY BASED PROTEIN STRUCTURE PREDICTION

机译:基于片段组装的蛋白质结构预测的有效优化算法

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摘要

Despite recent developments in protein structure prediction, an accurate new fold prediction algorithm remains elusive. One of the challenges facing current techniques is the size and complexity of the space containing possible structures for a query sequence. Traditionally, to explore this space fragment assembly approaches to new fold prediction have used stochastic optimization techniques. Here, we examine deterministic algorithms for optimizing scoring functions in protein structure prediction. Two previously unused techniques are applied to the problem, called the Greedy algorithm and the Hill-climbing (HC) algorithm. The main difference between the two is that the latter implements a technique to overcome local minima. Experiments on a diverse set of 276 proteins show that the HC algorithms consistently outperform existing approaches based on Simulated Annealing optimization (a traditional stochastic technique) in optimizing the root mean squared deviation between native and working structures.
机译:尽管蛋白质结构预测的最新进展,但精确的新折叠预测算法仍然难以捉摸。当前技术面临的挑战之一是包含查询序列可能结构的空间的大小和复杂性。传统上,为了探索这种空间碎片组装,使用新的折叠预测方法使用了随机优化技术。在这里,我们研究了确定性算法,用于优化蛋白质结构预测中的评分功能。之前使用过的两种技术被应用于此问题,称为贪婪算法和爬山(HC)算法。两者之间的主要区别在于后者实施了一种克服局部极小值的技术。在一组276种蛋白质上进行的实验表明,在优化本机结构与工作结构之间的均方根偏差方面,HC算法始终优于基于模拟退火优化(传统的随机技术)的现有方法。

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