首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Reference energy extremal optimization: A Stochastic search algorithm applied to computational protein design
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Reference energy extremal optimization: A Stochastic search algorithm applied to computational protein design

机译:参考能量极值优化:随机搜索算法应用于计算蛋白质设计

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摘要

We adapt a combinatorial optimization algorithm, extremal optimization (130), for the search problem in computational protein design. This algorithm takes advantage of the knowledge of local energy information and systematically improves on the residues that have high local energies. Power-law probability distributions are used to select the backbone sites to be improved on and the rotamer choices to be changed to. We compare this method with simulated annealing (SA) and motivate and present an improved method, which we call reference energy extremal optimization (REEO). REEO uses reference energies to convert a problem with a structured local-energy profile to one with more random profile, and extremal optimization proves to be extremely efficient for the latter problem. We show in detail the large improvement we have achieved using REEO as compared to simulated annealing and discuss a number of other heuristics we have attempted to date. (c) 2008 Wiley Periodicals, Inc.
机译:我们针对计算蛋白设计中的搜索问题采用了组合优化算法,即极值优化(130)。该算法利用了局部能量信息的知识,并系统地改进了具有较高局部能量的残基。幂律概率分布用于选择要改进的骨干站点和要更改的旋转异构体选择。我们将该方法与模拟退火(SA)进行了比较,并提出了一种改进的方法,称为参考能量极值优化(REEO)。 REEO使用参考能量将具有结构化局部能量分布图的问题转换为具有更多随机分布图的问题,而极值优化被证明对于后一个问题极其有效。我们将详细展示REEO与模拟退火相比所取得的巨大进步,并讨论了迄今为止我们尝试的其他许多启发式方法。 (c)2008年Wiley Periodicals,Inc.

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