IEM: an algorithm for iterative enhancement of motifs using comparative genomics data.

Erliang Zeng, K. Mathee, G. Narasimhan
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引用次数: 8

Abstract

Understanding gene regulation is a key step to investigating gene functions and their relationships. Many algorithms have been developed to discover transcription factor binding sites (TFBS); they are predominantly located in upstream regions of genes and contribute to transcription regulation if they are bound by a specific transcription factor. However, traditional methods focusing on finding motifs have shortcomings, which can be overcome by using comparative genomics data that is now increasingly available. Traditional methods to score motifs also have their limitations. In this paper, we propose a new algorithm called IEM to refine motifs using comparative genomics data. We show the effectiveness of our techniques with several data sets. Two sets of experiments were performed with comparative genomics data on five strains of P. aeruginosa. One set of experiments were performed with similar data on four species of yeast. The weighted conservation score proposed in this paper is an improvement over existing motif scores.
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IEM:一种利用比较基因组学数据迭代增强基序的算法。
了解基因调控是研究基因功能及其相互关系的关键一步。已经开发了许多算法来发现转录因子结合位点(TFBS);它们主要位于基因的上游区域,如果它们与特定的转录因子结合,则有助于转录调节。然而,传统的寻找基序的方法有缺点,这些缺点可以通过使用现在越来越多的比较基因组学数据来克服。传统的母题评分方法也有其局限性。在本文中,我们提出了一种新的算法,称为IEM,以细化基序使用比较基因组学数据。我们用几个数据集展示了我们的技术的有效性。利用比较基因组学数据对5株铜绿假单胞菌进行了两组实验。一组实验对四种酵母进行了类似的数据。本文提出的加权守恒分数是对现有基序分数的改进。
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