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Biclustering Expression Data Based on Expanding Localized Substructures

机译:基于扩展局部子结构的表达数据分类

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Biclustering gene expression data is the problem of extracting submatrices of genes and conditions exhibiting significant correlation across both the rows and the columns of a data matrix of expression values. We provide a method, LEB (Localize-and-Extract Biclusters) which reduces the search space into local neighborhoods within the matrix by first localizing correlated structures. The localization procedure takes its roots from effective use of graph-theoretical methods applied to problems exhibiting a similar structure to that of biclustering. Once interesting structures are localized the search space reduces to small neighborhoods and the biclusters are extracted from these localities. We evaluate the effectiveness of our method with extensive experiments both using artificial and real datasets.
机译:使基因表达数据成簇是提取基因和条件的子矩阵的问题,这些子矩阵在表达值的数据矩阵的行和列之间都显示出显着的相关性。我们提供了一种方法LEB(本地化和提取Biclusters),该方法通过首先定位相关结构来将搜索空间减少到矩阵内的局部邻域中。定位过程的根源在于有效利用图论方法,该方法适用于与双聚类结构表现出相似结构的问题。一旦确定了有趣的结构,搜索空间就会缩小为较小的邻域,并从这些位置中提取出双峰。我们使用人工和真实数据集,通过大量实验评估了我们方法的有效性。

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