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Inferential Clustering Approach for Microarray Experiments with Replicated Measurements

机译:重复测量的微阵列实验的推理聚类方法

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Cluster analysis has proven to be a useful tool for investigating the association structure among genes in a microarray data set. There is a rich literature on cluster analysis and various techniques have been developed. Such analyses heavily depend on an appropriate (dis)similarity measure. In this paper, we introduce a general clustering approach based on the confidence interval inferential methodology, which is applied to gene expression data of microarray experiments. Emphasis is placed on data with low replication (three or five replicates). The proposed method makes more efficient use of the measured data and avoids the subjective choice of a dissimilarity measure. This new methodology, when applied to real data, provides an easy-to-use bioinformatics solution for the cluster analysis of microarray experiments with replicates (see the Appendix). Even though the method is presented under the framework of microarray experiments, it is a general algorithm that can be used to identify clusters in any situation. The method's performance is evaluated using simulated and publicly available data set. Our results also clearly show that our method is not an extension of the conventional clustering method based on correlation or euclidean distance.
机译:事实证明,聚类分析是研究微阵列数据集中基因之间的关联结构的有用工具。关于聚类分析的文献很多,并且已经开发了各种技术。此类分析在很大程度上取决于适当的(非)相似性度量。在本文中,我们介绍了一种基于置信区间推论方法的通用聚类方法,该方法适用于微阵列实验的基因表达数据。重点放在复制率低(三个或五个重复)的数据上。所提出的方法可以更有效地利用测量数据,并且避免了主观选择相异性的方法。当将这种新方法应用于真实数据时,它为使用重复的微阵列实验的聚类分析提供了易于使用的生物信息学解决方案(请参见附录)。即使该方法是在微阵列实验的框架下提出的,它还是一种通用算法,可用于在任何情况下识别簇。使用模拟的和公开可用的数据集评估该方法的性能。我们的结果还清楚地表明,我们的方法不是基于相关性或欧式距离的常规聚类方法的扩展。

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