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首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Ab initio protein fold prediction using evolutionary algorithms: Influence of design and control parameters on performance
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Ab initio protein fold prediction using evolutionary algorithms: Influence of design and control parameters on performance

机译:使用进化算法从头算蛋白质折叠预测:设计和控制参数对性能的影响

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摘要

True ab initio prediction of protein 3D structure requires only the protein primary structure, a physicochemical free energy model, and a search method for identifying the free energy global minimum. Various characteristics of evolutionary algorithms (EAs) mean they are in principle well suited to the latter. Studies to date have been less than encouraging, however. This is because of the limited consideration given to EA design and control parameter issues. A comprehensive study of these issues was, therefore, undertaken for ab initio protein fold prediction using a full atomistic protein model. The performance and optimal control parameter settings of twelve EA designs where first established using a 15-residue polyalanine molecule-design aspects varied include the encoding alphabet, crossover operator, and replacement strategy. It can be concluded that real encoding and multipoint crossover are superior, while both generational and steady-state replacement strategies have merits. The scaling between the optimal control parameter settings and polyalanine size was also identified for both generational and steady-state designs based on real encoding and multipoint crossover. Application of the steady-state design to met-enkephalin indicated that these scalings are potentially transferable to real proteins. Comparison of the performance of the steady state design for met-enkephalin with other ab initio methods indicates that EAs can be competitive provided the correct design and control parameter values are used. (c) 2006 Wiley Periodicals, Inc.
机译:真正的蛋白质3D结构从头开始预测仅需要蛋白质一级结构,理化自由能模型和用于识别自由能全局最小值的搜索方法。进化算法(EA)的各种特性意味着它们在原则上非常适合后者。然而,迄今为止的研究并不令人鼓舞。这是因为对EA设计和控制参数问题的考虑有限。因此,对这些问题进行了全面的研究,以使用完整的原子蛋白模型从头算蛋白质折叠。首先使用15个残基的聚丙氨酸分子建立的十二个EA设计的性能和最佳控制参数设置各不相同,包括编码字母,交叉算子和替换策略。可以得出结论,实数编码和多点交叉是优越的,而世代和稳态替换策略都有其优点。对于基于真实编码和多点交叉的世代和稳态设计,还确定了最佳控制参数设置和聚丙氨酸大小之间的标度。稳态设计应用于甲乙脑素表明这些结垢有可能转移至真实蛋白质中。对脑啡肽稳态设计与其他从头算方法的性能比较表明,只要使用正确的设计和控制参数值,EA即可具有竞争力。 (c)2006年Wiley Periodicals,Inc.

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