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A probabilistic coevolutionary biclustering algorithm for discovering coherent patterns in gene expression dataset

机译:在基因表达数据集中发现相干模式的概率协同进化双聚类算法

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BackgroundBiclustering has been utilized to find functionally important patterns in biological problem. Here a bicluster is a submatrix that consists of a subset of rows and a subset of columns in a matrix, and contains homogeneous patterns. The problem of finding biclusters is still challengeable due to computational complex trying to capture patterns from two-dimensional features.ResultsWe propose a Probabilistic COevolutionary Biclustering Algorithm (PCOBA) that can cluster the rows and columns in a matrix simultaneously by utilizing a dynamic adaptation of multiple species and adopting probabilistic learning. In biclustering problems, a coevolutionary search is suitable since it can optimize interdependent subcomponents formed of rows and columns. Furthermore, acquiring statistical information on two populations using probabilistic learning can improve the ability of search towards the optimum value. We evaluated the performance of PCOBA on synthetic dataset and yeast expression profiles. The results demonstrated that PCOBA outperformed previous evolutionary computation methods as well as other biclustering methods.ConclusionsOur approach for searching particular biological patterns could be valuable for systematically understanding functional relationships between genes and other biological components at a genome-wide level.
机译:背景技术簇聚已用于发现生物学问题中功能上重要的模式。在这里,二元组是一个子矩阵,由矩阵中的行的子集和列的子集组成,并包含同构模式。由于试图从二维特征中捕获模式的计算复杂性,因此发现双簇的问题仍然是一个挑战。结果我们提出了一种概率协同进化双簇算法(PCOBA),该算法可以通过利用多个元素的动态自适应同时对矩阵中的行和列进行聚类物种并采用概率学习。在双簇问题中,因为它可以优化由行和列组成的相互依赖的子组件,所以适合进行共进化搜索。此外,使用概率学习获取两个种群的统计信息可以提高朝最佳值搜索的能力。我们评估了PCOBA在合成数据集和酵母表达谱上的性能。结果表明,PCOBA优于以前的进化计算方法和其他双聚类方法。结论我们的搜索特定生物学模式的方法对于在基因组范围内系统地了解基因与其他生物学成分之间的功能关系可能是有价值的。

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