用随机算法聚类微阵列数据

H. Shon, Sunshin Kim, Seung-Jung Shin, K. Ryu
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引用次数: 0

摘要

基因表达数据的聚类用于分析微阵列研究的结果。这种方法对于理解一类特定的基因在生物过程中如何共同起作用是很有用的。在本研究中,我们尝试使用马尔可夫聚类(MCL)算法进行聚类,这是一种基于随机流模拟的图聚类方法。它是一种快速高效的算法,通过计算概率来模拟图中节点的聚类。首先,我们利用样本间基因的欧几里得距离将原始矩阵转换为样本矩阵。其次,我们将MCL算法应用到新的欧氏距离矩阵中,并考虑了2个因素,即矩阵的膨胀项和对角项。我们已经转向通过大量的实验来设定适当的因素。此外,使用距离阈值,即每列数据元素的平均值,以明确区分组之间。我们的实验结果表明,与之前已知的分类相比,平均准确率约为70%。我们还将MCL算法与自组织映射(SOM)聚类、K-means聚类和分层聚类(HC)算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Microarray Data by Using a Stochastic Algorithm
The clustering of gene expression data is used to analyze the results of microarray studies. This method is often useful in understanding how a particular class of genes functions together during a biological process. In this study, we attempted to perform clustering using the Markov cluster (MCL) algorithm, a clustering method for graphs based on the simulation of stochastic flow. It is a fast and efficient algorithm that clusters nodes in a graph through simulation by computing probability. First, we converted the raw matrix into a sample matrix using the Euclidean distance of the genes between the samples. Second, we applied the MCL algorithm to the new matrix of Euclidean distance and considered 2 factors, namely, the inflation and diagonal terms of the matrix. We have turned to set the proper factors through massive experiments. In addition, distance thresholds, i.e., the average of each column data elements, were used to clearly distinguish between groups. Our experimental result shows about 70% accuracy in average compared to the class that is known before. We also compared the MCL algorithm with the self-organizing map (SOM) clustering, K-means clustering and hierarchical clustering (HC) algorithms.
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