Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in assigning related gene-expression profiles to clusters. Obtaining a consensus set of clusters from a number of clustering methods should improve confidence in gene-expression analysis. Here we introduce consensus clustering, which provides such an advantage. When coupled with a statistically based gene functional analysis, our method allowed the identification of novel genes regulated by NFκB and the unfolded protein response in certain B-cell lymphomas
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency i...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
Motivation: Unsupervised learning or clustering is frequently used to explore gene expression profil...
In data analysis, clustering is the process of finding groups in unlabelled data according to simila...
In the rapidly evolving field of genomics, many clustering and classification methods have been deve...
This work presents a new consensus clustering method for gene expression microarray data based on a ...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
Abstract. In this paper we present a new methodology of class discovery and clustering validation ta...
Gene expression data hide vital information required to understand the biological process that takes...
Gene expression analysis is becoming very important in order to understand complex living organisms....
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency i...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
Motivation: Unsupervised learning or clustering is frequently used to explore gene expression profil...
In data analysis, clustering is the process of finding groups in unlabelled data according to simila...
In the rapidly evolving field of genomics, many clustering and classification methods have been deve...
This work presents a new consensus clustering method for gene expression microarray data based on a ...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
Abstract. In this paper we present a new methodology of class discovery and clustering validation ta...
Gene expression data hide vital information required to understand the biological process that takes...
Gene expression analysis is becoming very important in order to understand complex living organisms....
The advent of DNA microarray technology has enabled biologists to monitor the expression levels (MRN...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...