首页> 外文会议>Bioinformatics Research and Applications; Lecture Notes in Bioinformatics; 4463 >GFBA: A Biclustering Algorithm for Discovering Value-Coherent Biclusters
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GFBA: A Biclustering Algorithm for Discovering Value-Coherent Biclusters

机译:GFBA:用于发现价值连贯的块团的成簇算法

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摘要

Clustering has been one of the most popular approaches used in gene expression data analysis. A clustering method is typically used to partition genes according to their similarity of expression under different conditions. However, it is often the case that some genes behave similarly only on a subset of conditions and their behavior is uncorrelated over the rest of the conditions. As traditional clustering methods will fail to identify such gene groups, the biclustering paradigm is introduced recently to overcome this limitation. In contrast to traditional clustering, a biclustering method produces biclusters, each of which identifies a set of genes and a set of conditions under which these genes behave similarly. The boundary of a bicluster is usually fuzzy in practice as genes and conditions can belong to multiple biclusters at the same time but with different membership degrees. However, to the best of our knowledge, a method that can discover fuzzy value-coherent biclusters is still missing. In this paper, (ⅰ) we propose a new fuzzy bicluster model for value-coherent biclusters; (ii) based on this model, we define an objective function whose minimum will characterize good fuzzy value-coherent biclusters; and (iii) we propose a genetic algorithm based method, Genetic Fuzzy Biclustering Algorithm (GFBA), to identify fuzzy value-coherent biclusters. Our experiments show that GFBA is very efficient in converging to the global optimum.
机译:聚类已经成为基因表达数据分析中最流行的方法之一。聚类方法通常用于根据基因在不同条件下的表达相似性来划分基因。但是,通常情况下,某些基因仅在部分条件下表现相似,而其行为与其余条件不相关。由于传统的聚类方法无法识别此类基因组,因此最近引入了双聚类范式来克服此限制。与传统聚类相反,双聚类方法产生双聚类,每个双聚类可识别一组基因和一组条件,在这些条件下这些基因的行为类似。实际上,双基因组的边界通常是模糊的,因为基因和条件可以同时属于多个双基因组,但隶属度不同。但是,据我们所知,仍然缺少一种能够发现模糊值相干双聚类的方法。在本文中,(ⅰ)我们提出了一个新的模糊二聚类模型,用于价值相关二聚类; (ii)基于该模型,我们定义了一个目标函数,其最小值将表征具有良好模糊值的相干双聚类; (iii)我们提出了一种基于遗传算法的方法,即遗传模糊双聚类算法(GFBA),以识别模糊值相干双聚类。我们的实验表明,GFBA在收敛到全局最优值方面非常有效。

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