Judy M V, Ravichandran K S, Murugesan K
School of Computing, SASTRA University, Thanjavur, India.
Comput Methods Biomech Biomed Engin. 2009 Aug;12(4):407-13. doi: 10.1080/10255840802649715.
Genetic algorithms (GA) are often well suited for optimisation problems involving several conflicting objectives. It is more suitable to model the protein structure prediction problem as a multi-objective optimisation problem since the potential energy functions used in the literature to evaluate the conformation of a protein are based on the calculations of two different interaction energies: local (bond atoms) and non-local (non-bond atoms) and experiments have shown that those types of interactions are in conflict, by using the potential energy function, Chemistry at Harvard Macromolecular Mechanics. In this paper, we have modified the immune inspired Pareto archived evolutionary strategy (I-PAES) algorithm and denoted it as MI-PAES. It can effectively exploit some prior knowledge about the hydrophobic interactions, which is one of the most important driving forces in protein folding to make vaccines. The proposed MI-PAES is comparable with other evolutionary algorithms proposed in literature, both in terms of best solution found and the computational time and often results in much better search ability than that of the canonical GA.
遗传算法(GA)通常非常适合涉及多个相互冲突目标的优化问题。将蛋白质结构预测问题建模为多目标优化问题更为合适,因为文献中用于评估蛋白质构象的势能函数基于两种不同相互作用能的计算:局部(键合原子)和非局部(非键合原子),并且实验表明,通过使用势能函数(哈佛大分子力学化学),这些类型的相互作用是相互冲突的。在本文中,我们对受免疫启发的帕累托存档进化策略(I-PAES)算法进行了修改,并将其命名为MI-PAES。它可以有效地利用一些关于疏水相互作用的先验知识,疏水相互作用是蛋白质折叠形成疫苗的最重要驱动力之一。所提出的MI-PAES在找到的最佳解决方案和计算时间方面与文献中提出的其他进化算法相当,并且通常比传统遗传算法具有更好的搜索能力。