Ab Initio粗蛋白结构预测的新框架。

Q1 Biochemistry, Genetics and Molecular Biology Advances in Bioinformatics Pub Date : 2018-06-20 DOI:10.1155/2018/7607384
Sandhya Parasnath Dubey, S Balaji, N Gopalakrishna Kini, M Sathish Kumar
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引用次数: 3

摘要

疏水极性模型是蛋白质结构预测(PSP)问题的简化表示。然而,即使使用HP模型,PSP问题仍然是NP完全问题。本文提出了一种系统的、针对特定问题的进化程序算子设计,将其与局部搜索爬山相结合,以有效地探索PSP的搜索空间,从而获得最优构象。所提出的算法通过结合以下新特征来实现这一点:(i)新的初始化方法,该方法只生成具有(而不是随机的)更好适应度值的有效个体;(ii)使用限制局部收敛的基于概率的选择算子;(iii)使用基于二级结构的突变算子,其使结构更接近实验室确定的结构;以及(iv)结合所有上述特征,开发了一个完整的双层框架。所开发的框架在正方形和三角形晶格上构建蛋白质构象。使用基准序列进行了测试,并使用各种最先进的算法进行了比较评估。此外,除了假设的测试序列外,我们还测试了存储在蛋白质数据库存储库中的蛋白质序列。已经观察到,所提出的框架在准确性(适应度值)和速度(获得最终构象所需的代数)方面显示出优异的性能。用于增强性能的概念是通用的,可以与任何其他基于群体的搜索算法一起使用,如遗传算法、蚁群优化和免疫算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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A Novel Framework for Ab Initio Coarse Protein Structure Prediction.

Hydrophobic-Polar model is a simplified representation of Protein Structure Prediction (PSP) problem. However, even with the HP model, the PSP problem remains NP-complete. This work proposes a systematic and problem specific design for operators of the evolutionary program which hybrids with local search hill climbing, to efficiently explore the search space of PSP and thereby obtain an optimum conformation. The proposed algorithm achieves this by incorporating the following novel features: (i) new initialization method which generates only valid individuals with (rather than random) better fitness values; (ii) use of probability-based selection operators that limit the local convergence; (iii) use of secondary structure based mutation operator that makes the structure more closely to the laboratory determined structure; and (iv) incorporating all the above-mentioned features developed a complete two-tier framework. The developed framework builds the protein conformation on the square and triangular lattice. The test has been performed using benchmark sequences, and a comparative evaluation is done with various state-of-the-art algorithms. Moreover, in addition to hypothetical test sequences, we have tested protein sequences deposited in protein database repository. It has been observed that the proposed framework has shown superior performance regarding accuracy (fitness value) and speed (number of generations needed to attain the final conformation). The concepts used to enhance the performance are generic and can be used with any other population-based search algorithm such as genetic algorithm, ant colony optimization, and immune algorithm.

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Advances in Bioinformatics
Advances in Bioinformatics Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
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