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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A probabilistic relaxation labeling framework for reducing the noise effect in geometric biclustering of gene expression data
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A probabilistic relaxation labeling framework for reducing the noise effect in geometric biclustering of gene expression data

机译:一种概率松弛标记框架,可减少基因表达数据的几何聚类中的噪声影响

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摘要

Biclustering is an important method in DNA microarray analysis which can be applied when only a subset of genes is co-expressed in a subset of conditions. Unlike standard clustering analyses, biclustering methodology can perform simultaneous classification on two dimensions of genes and conditions in a microarray data matrix. However, the performance of biclustering algorithms is affected by the inherent noise in data, types of biclusters and computational complexity. In this paper, we present a geometric biclustering method based on the Hough transform and the relaxation labeling technique. Unlike many existing biclustering algorithms, we first consider the biclustering patterns through geometric interpretation. Such a perspective makes it possible to unify the formulation of different types of biclusters as hyperplanes in spatial space and facilitates the use of a generic plane finding algorithm for bicluster detection. In our algorithm, the Hough transform is employed for hyperplane detection in sub-spaces to reduce the computational complexity. Then sub-biclusters are combined into larger ones under the probabilistic relaxation labeling framework. Our simulation studies demonstrate the robustness of the algorithm against noise and outliers. In addition, our method is able to extract biologically meaningful biclusters from real microarray gene expression data.
机译:比对分析是DNA微阵列分析中的一种重要方法,当在条件子集中仅共同表达基因的一个子集时,可以应用该方法。与标准聚类分析不同,双聚类分析方法可以在微阵列数据矩阵中对基因和条件的二维进行同时分类。但是,双簇算法的性能受数据中固有的噪声,双簇类型和计算复杂性的影响。在本文中,我们提出了一种基于Hough变换和松弛标记技术的几何双聚类方法。与许多现有的双簇算法不同,我们首先通过几何解释来考虑双簇模式。这样的观点使得有可能统一将不同类型的双节簇的表示统一为空间空间中的超平面,并且有助于将通用的平面发现算法用于双节簇检测。在我们的算法中,霍夫变换用于子空间中的超平面检测,以降低计算复杂度。然后,在概率松弛标记框架下,将子二类合并为更大的子二类。我们的仿真研究证明了该算法对噪声和离群值的鲁棒性。此外,我们的方法能够从真正的微阵列基因表达数据中提取出生物学上有意义的双聚体。

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