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A novel swarm intelligence algorithm for finding DNA motifs.

机译:一种新颖的群体智能算法,可找到DNA图案。

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摘要

Discovering DNA motifs from co-expressed or co-regulated genes is an important step towards deciphering complex gene regulatory networks and understanding gene functions. Despite significant improvement in the last decade, it still remains one of the most challenging problems in computational molecular biology. In this work, we propose a novel motif finding algorithm that finds consensus patterns using a population-based stochastic optimisation technique called Particle Swarm Optimisation (PSO), which has been shown to be effective in optimising difficult multidimensional problems in continuous domains. We propose to use a word dissimilarity graph to remap the neighborhood structure of the solution space of DNA motifs, and propose a modification of the naive PSO algorithm to accommodate discrete variables. In order to improve efficiency, we also propose several strategies for escaping from local optima and for automatically determining the termination criteria. Experimental results on simulated challenge problems show that our method is both more efficient and more accurate than several existing algorithms. Applications to several sets of real promoter sequences also show that our approach is able to detect known transcription factor binding sites, and outperforms two of the most popular existing algorithms.
机译:从共同表达或共同调控的基因中发现DNA图案是解密复杂基因调控网络和理解基因功能的重要一步。尽管在过去十年中取得了重大进步,但它仍然是计算分子生物学中最具挑战性的问题之一。在这项工作中,我们提出了一种新颖的主题查找算法,该算法使用一种称为粒子群优化(PSO)的基于种群的随机优化技术来找到共识模式,该算法已被证明可以有效地解决连续域中的难题。我们建议使用单词不相似图重映射DNA主题的解空间的邻域结构,并提出对朴素的PSO算法的一种修改,以适应离散变量。为了提高效率,我们还提出了几种避免局部最优并自动确定终止标准的策略。模拟挑战问题的实验结果表明,与几种现有算法相比,我们的方法既高效又准确。在几组真实启动子序列上的应用也表明,我们的方法能够检测已知的转录因子结合位点,并且优于两种最流行的现有算法。

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