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用于蛋白质穿线法的遗传算法。

Genetic algorithms for protein threading.

作者信息

Yadgari J, Amir A, Unger R

机构信息

Department of Mathematics and Computer Science, Bar-Ilan University, Ramat-Gan, Israel.

出版信息

Proc Int Conf Intell Syst Mol Biol. 1998;6:193-202.

PMID:9783225
Abstract

Despite many years of efforts, a direct prediction of protein structure from sequence is still not possible. As a result, in the last few years researchers have started to address the "inverse folding problem": Identifying and aligning a sequence to the fold with which it is most compatible, a process known as "threading". In two meetings in which protein folding predictions were objectively evaluated, it became clear that threading as a concept promises a real breakthrough, but that much improvement is still needed in the technique itself. Threading is a NP-hard problem, and thus no general polynomial solution can be expected. Still a practical approach with demonstrated ability to find optimal solutions in many cases, and acceptable solutions in other cases, is needed. We applied the technique of Genetic Algorithms in order to significantly improve the ability of threading algorithms to find the optimal alignment of a sequence to a structure, i.e. the alignment with the minimum free energy. A major progress reported here is the design of a representation of the threading alignment as a string of fixed length. With this representation validation of alignments and genetic operators are effectively implemented. Appropriate data structure and parameters have been selected. It is shown that Genetic Algorithm threading is effective and is able to find the optimal alignment in a few test cases. Furthermore, the described algorithm is shown to perform well even without pre-definition of core elements. Existing threading methods are dependent on such constraints to make their calculations feasible. But the concept of core elements is inherently arbitrary and should be avoided if possible. While a rigorous proof is hard to submit yet an, we present indications that indeed Genetic Algorithm threading is capable of finding consistently good solutions of full alignments in search spaces of size up to 10(70).

摘要

尽管经过多年努力,仍无法直接从序列预测蛋白质结构。因此,在过去几年中,研究人员开始着手解决“反向折叠问题”:识别并将一个序列与最匹配的折叠进行比对,这个过程称为“穿线法”。在两次对蛋白质折叠预测进行客观评估的会议上,很明显穿线法作为一个概念有望带来真正的突破,但该技术本身仍需大幅改进。穿线法是一个NP难问题,因此无法期望有通用的多项式解决方案。然而,仍需要一种实用的方法,这种方法在许多情况下有能力找到最优解,在其他情况下能找到可接受的解。我们应用遗传算法技术,以显著提高穿线算法找到序列与结构的最优比对的能力,即找到具有最小自由能的比对。本文报道的一个主要进展是将穿线比对表示为固定长度字符串的设计。通过这种表示,有效地实现了比对的验证和遗传算子。选择了合适的数据结构和参数。结果表明,遗传算法穿线法是有效的,并且能够在一些测试案例中找到最优比对。此外,即使没有预先定义核心元素,所描述的算法也表现良好。现有的穿线方法依赖于这些约束来使计算可行。但是核心元素的概念本质上是任意的,应尽可能避免。虽然很难给出严格的证明,但我们给出了一些迹象,表明遗传算法穿线法确实能够在大小达10(70)的搜索空间中持续找到完整比对的良好解决方案。

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