Comprehensive analysis of multiple microarray datasets by binarization of consensus partition matrix

Basel Abu-Jamous, Rui Fa, D. Roberts, A. Nandi
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引用次数: 2

Abstract

Clustering methods have been increasingly applied over gene expression datasets. Different results are obtained when different clustering methods are applied over the same dataset as well as when the same set of genes is clustered in different microarray datasets. Most approaches cluster genes' profiles from only one dataset, either by a single method or an ensemble of methods; we propose using the binarization of consensus partition matrix (Bi-CoPaM) method to analyze comprehensively the results of clustering the same set of genes by different clustering methods and from different datasets. A tunable consensus result is generated and can be tightened or widened to control the assignment of the doubtful genes that have been assigned to different clusters in different individual results. We apply this over a subset of 384 yeast genes by using four clustering methods and five microarray datasets. The results demonstrate the power of Bi-CoPaM in fusing many different individual results in a tunable consensus result and that such comprehensive analysis can overcome many of the defects in any of the individual datasets or clustering methods.
基于共识划分矩阵二值化的多微阵列数据集综合分析
聚类方法已越来越多地应用于基因表达数据集。在同一数据集上采用不同的聚类方法,以及在不同的微阵列数据集上对同一组基因进行聚类,会得到不同的结果。大多数方法只从一个数据集中聚类基因谱,要么通过单一方法,要么通过方法集合;本文提出了共识划分矩阵二值化(Bi-CoPaM)方法,以综合分析不同聚类方法和不同数据集对同一组基因进行聚类的结果。产生一个可调的共识结果,可以收紧或扩大,以控制在不同个体结果中已分配到不同集群的可疑基因的分配。我们通过使用四种聚类方法和五个微阵列数据集对384个酵母基因的子集进行了应用。结果证明了Bi-CoPaM在将许多不同的个体结果融合在一个可调的共识结果中的能力,并且这种综合分析可以克服任何单个数据集或聚类方法中的许多缺陷。
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