Biclustering of Biological Sequences

F. Mhamdi, Sourour Marai
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Abstract

The analysis of biological data is a challenging problem in bioinformatics and data mining field. Given the complexity of the analysis of biological information, several methods have been proposed for analyzing this biological information in databases mostly in the form of genetic sequences and protein structures. Actually, genetic sequences are represented by matrices that indicate the expression levels of thousands of genes under several conditions. The analysis of this huge amount of data consists in extracting genes that behave similarly under certain conditions. In fact, the extracted information are sub-matrices (biclusters) that satisfy a coherence constraint. The process of extracting them is called biclustering. In this paper, we deal with biclustering problems applied to the analysis of biological data. First, a description of the problem is reviewed. Furthermore, we present a description of the divide and conquer approach that we will adopt to our algorithm for extracting biclusters. Additionally, a new evaluation function intitled Pattern Correlation Value (PCV), allowing identification of all biclusters types is proposed. Experimental results, demonstrate that the proposed methods are effective on this problem and are able to extract relevant information from the considered data.
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生物序列的双聚类
生物数据分析是生物信息学和数据挖掘领域的一个具有挑战性的问题。鉴于生物信息分析的复杂性,已经提出了几种方法来分析数据库中的生物信息,主要以基因序列和蛋白质结构的形式。实际上,基因序列是由矩阵表示的,矩阵表示数千个基因在不同条件下的表达水平。对大量数据的分析包括提取在特定条件下表现相似的基因。实际上,提取的信息是满足相干约束的子矩阵(双聚类)。提取它们的过程被称为双聚类。在本文中,我们处理应用于生物数据分析的双聚类问题。首先,对问题的描述进行回顾。此外,我们提出了分而治之的方法的描述,我们将采用我们的算法提取双聚类。此外,提出了一种新的评价函数模式相关值(Pattern Correlation Value, PCV),可以识别所有的双聚类类型。实验结果表明,该方法能够有效地从考虑的数据中提取出相关信息。
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