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Exploring the high selectivity of 3-D protein structures using distributed memetic algorithms

机译:使用分布式膜算法探索3-D蛋白质结构的高选择性

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This paper addresses the problem of predicting the tertiary structure of a protein given its amino acid sequence, which has been reported to belong to the NP-Complete class of problems. We design an ad-hoc distributed memetic algorithm (DMA) and evaluate several algorithm configurations in terms of different distributed population structures, ad-hoc local search strategies and the combination of two energy functions. The algorithm uses an asynchronous hierarchical population of agents that exchange solutions along the execution of the algorithm. Extensive computational experiments were carried out in order to test: (1) the impact of the communication on different population structures, (2) the combination of the energy functions used for fitness calculations, (3) the scalability of the algorithm for structures with a larger number of agents, (4) the performance of the different approaches proposed for local search and diversity calculations, (5) the biological significance of the predicted structures and (6) to compare the best performing configuration of the DMA with other algorithms from the literature. The algorithm was tested on 20 sequences of different size, and the analysis was performed regarding both computational quality and biological significance of the predicted structures. Results show that the combination of energy functions and the proposed Distributed Memetic Algorithm allows the prediction of structures that are similar to the experimental ones. Performance analysis shows that increasing parallelism improves the execution times, without worsening the quality of the solutions. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文解决了预测鉴于其氨基酸序列的蛋白质的三级结构的问题,这些氨基酸序列据报道属于NP完整的问题。我们设计了一个临时分布式麦克算法(DMA),并根据不同分布式人口结构,临时本地搜索策略和两个能量功能的组合评估多种算法配置。该算法使用沿着算法的执行交换解决方案的异步分层群。进行了广泛的计算实验,以测试:(1)(1)通信对不同人口结构的影响,(2)用于健身计算的能量函数的组合,(3)结构算法的可扩展性更大的代理商,(4)所提出的不同方法的性能提出用于本地搜索和分集计算,(5)预测结构的生物学意义和(6)以比较与其他算法的最佳性能配置DMA的配置配置文学。该算法在20个不同尺寸的序列上进行测试,并对预测结构的计算质量和生物学意义进行了分析。结果表明,能量功能和所提出的分布式膜算法的组合允许预测类似于实验性的结构。性能分析表明,不断增长的并行性改善了执行时间,而不会恶化解决方案的质量。 (c)2020 Elsevier B.v.保留所有权利。

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