Clustering methods are widely used in the analysis of gene expression data for their ability to uncover coordinated expression profiles. One important goal of clustering is to discover co–regulated genes because it has been postulated that co–regulation implies a similar function. In the context of agglomerative hierarchical clustering, we introduced a dissimilarity measure based on the Wilks’ Λ statistic that they called the Wilks’ dissimilarity and showed its usefulness in the identification of transcription modules. In this paper, we discuss the ability of the Wilks’ dissimilarity to identify clusters of co-expressed genes by providing an example where the most commonly used dissimilarity measures fail. Furthermore, we carry out a set of...
AbstractDistance based clustering algorithms can group genes that show similar expression values und...
Motivation: Clustering genes based upon their expression patterns allows us to predict gene function...
In this work, we assess the suitability of cluster analysis for the gene grouping problem confronted...
Clustering methods are widely used in the analysis of gene expression data for their ability to unco...
Clustering methods are widely used in the analysis of microarray data for their ability to uncover c...
Clustering techniques have been largely used in the analysis of microarray data. One of the main tas...
Clustering techniques have been largely used in the analysis of microarray data. One of the main tas...
Clustering methods are widely used in the analysis of microar- ray data for their ability to discove...
Abstract: Identifying groups of genes that manifest similar expression patterns is crucial in the an...
In microarray data each variable corresponds to the expression level of a gene. A gene regulatory ne...
Motivation: Cluster analysis (of gene-expression data) is a useful tool for identifying biologically...
Analysis of large-scale gene expression studies usually begins with gene clustering. A ubiquitous pr...
The combined interpretation of gene expression data and gene sequences is important for the investig...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
Abstract: Motivation: Clustering genes based upon their expression patterns allows us to predict gen...
AbstractDistance based clustering algorithms can group genes that show similar expression values und...
Motivation: Clustering genes based upon their expression patterns allows us to predict gene function...
In this work, we assess the suitability of cluster analysis for the gene grouping problem confronted...
Clustering methods are widely used in the analysis of gene expression data for their ability to unco...
Clustering methods are widely used in the analysis of microarray data for their ability to uncover c...
Clustering techniques have been largely used in the analysis of microarray data. One of the main tas...
Clustering techniques have been largely used in the analysis of microarray data. One of the main tas...
Clustering methods are widely used in the analysis of microar- ray data for their ability to discove...
Abstract: Identifying groups of genes that manifest similar expression patterns is crucial in the an...
In microarray data each variable corresponds to the expression level of a gene. A gene regulatory ne...
Motivation: Cluster analysis (of gene-expression data) is a useful tool for identifying biologically...
Analysis of large-scale gene expression studies usually begins with gene clustering. A ubiquitous pr...
The combined interpretation of gene expression data and gene sequences is important for the investig...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
Abstract: Motivation: Clustering genes based upon their expression patterns allows us to predict gen...
AbstractDistance based clustering algorithms can group genes that show similar expression values und...
Motivation: Clustering genes based upon their expression patterns allows us to predict gene function...
In this work, we assess the suitability of cluster analysis for the gene grouping problem confronted...