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Fuzzy C-means method for clustering microarray data.

机译:芯片数据聚类的模糊C-均值方法。

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Motivation: Clustering analysis of data from DNA microarray hybridization studies is essential for identifying biologically relevant groups of genes. Partitional clustering methods such as K-means or self-organizing maps assign each gene to a single cluster. However, these methods do not provide information about the influence of a given gene for the overall shape of clusters. Here we apply a fuzzy partitioning method, Fuzzy C-means (FCM), to attribute cluster membership values to genes. Results: A major problem in applying the FCM method for clustering microarray data is the choice of the fuzziness parameter m. We show that the commonly used value m = 2 is not appropriate for some data sets, and that optimal values for m vary widely from one data set to another. We propose an empirical method, based on the distribution of distances between genes in a given data set, to determine an adequate value for m. By setting threshold levels for the membership values, genes which are tigthly associated to a given cluster can be selected. Using a yeast cell cycle data set as an example, we show that this selection increases the overall biological significance of the genes within the cluster. Availability: Supplementary text and Matlab functions are available at http://www-igbmc.u-strasbg.fr/fcm/ Contact: doulaye@titus.u-strasbg.fr
机译:动机:DNA微阵列杂交研究数据的聚类分析对于鉴定生物学上相关的基因组至关重要。分区聚类方法(例如K均值或自组织图)将每个基因分配给单个聚类。但是,这些方法没有提供有关给定基因对簇整体形状的影响的信息。在这里,我们应用模糊划分方法,即模糊C均值(FCM),将聚类成员值归因于基因。结果:应用FCM方法对微阵列数据进行聚类的主要问题是模糊度参数m的选择。我们表明,常用的值m = 2不适合某些数据集,并且m的最佳值从一个数据集到另一个数据集差异很大。我们基于给定数据集中基因之间的距离分布,提出一种经验方法,以确定m的适当值。通过设置隶属度值的阈值水平,可以选择与给定聚类第56位关联的基因。以酵母细胞周期数据集为例,我们表明这种选择增加了簇内基因的整体生物学意义。可用性:补充文本和Matlab函数可在http://www-igbmc.u-strasbg.fr/fcm/中获得。联系人:doulaye@titus.u-strasbg.fr

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