多分子序列比对的遗传算法。

C Zhang, A K Wong
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引用次数: 110

摘要

动机:多分子序列比对是计算生物学中最重要和最具挑战性的任务之一。目前使用的对齐技术的特点是计算复杂度高,阻碍了它们的广泛应用。本研究旨在开发一种高效的多序列比对新技术。方法:该方法基于遗传算法。遗传算法是一种高效、鲁棒的随机搜索方法。通过将生物分子序列比对转化为在“比对空间”中寻找最优或接近最优点的问题,遗传算法可以非常有效地找到良好的比对。结果:在实际数据集上的实验表明,该技术的平均计算时间比基于两两动态规划的技术低两到三个阶,而对齐质量非常相似。可用性:已经在UNIX上编写了一个C程序来实现该技术。可向作者索取。
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A genetic algorithm for multiple molecular sequence alignment.

Motivation: Multiple molecular sequence alignment is among the most important and most challenging tasks in computational biology. The currently used alignment techniques are characterized by great computational complexity, which prevents their wider use. This research is aimed at developing a new technique for efficient multiple sequence alignment.

Approach: The new method is based on genetic algorithms. Genetic algorithms are stochastic approaches for efficient and robust searching. By converting biomolecular sequence alignment into a problem of searching for optimal or near-optimal points in an 'alignment space', a genetic algorithm can be used to find good alignments very efficiently.

Results: Experiments on real data sets have shown that the average computing time of this technique may be two or three orders lower than that of a technique based on pairwise dynamic programming, while the alignment qualities are very similar.

Availability: A C program on UNIX has been written to implement the technique. It is available on request from the authors.

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A genetic algorithm for multiple molecular sequence alignment. Displaying the information contents of structural RNA alignments: the structure logos. Q-RT-PCR: data analysis software for measurement of gene expression by competitive RT-PCR. SS3D-P2: a three dimensional substructure search program for protein motifs based on secondary structure elements. XDOM, a graphical tool to analyse domain arrangements in any set of protein sequences.
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