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A Knowledge-Based Initial Population Generation in Memetic Algorithm for Protein Structure Prediction

机译:蛋白质结构预测麦克解算法中基于知识的初始群体生成

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Predicting the minimum energy protein structure from its arnino acid sequence, even under the rather simplified HP lattice model, continues to be an important and challenging problem in computational biology. In this paper, we propose a novel initial population generation strategy for evolutionary algorithm incorporating domain knowledge based on the concept of maximum hydrophobic core formation for Protein structure prediction (PSP) problem. The proposed technique helps the optimization process to commence with diverse seeds and thereby aids in converging to the global solution quickly. The experimental results, conducted on PSP problem using HP benchmark sequences for 2D square and 3D cubic lattice model, demonstrate that the proposed evolutionary algorithm with new core-based population initialization technique is very effective in improving the optimization process in terms of convergence as well as in achieving the optimal energy.
机译:即使在相当简化的HP格子模型中,即使在相当简化的HP晶格模型中,预测来自其亚氨基酸序列的最小能量蛋白质结构仍然是计算生物学中的重要和具有挑战性的问题。本文提出了一种基于蛋白质结构预测(PSP)问题的最大疏水核心形成的概念,提出了一种新的初始初始群体生成策略。所提出的技术有助于优化过程从多样化的种子开始,从而有助于快速融合到全球解决方案。对使用2D方形和3D立方格晶格模型的HP基准序列对PSP问题进行的实验结果表明,具有新的基于核心的人口初始化技术的提出的进化算法非常有效地改善了在收敛方面的优化过程以及在实现最佳能量方面。

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