AbstractThe approach to identify clusters of genes represented both by expression values and Gene Ontology annotations, where cluster membership should not be in conflict with any of the representations is presented in the paper. The method enables to identify the genes that are differently clustered in different representations, what can lead to further analysis and interesting conclusions. The approach is based on the fuzzy clustering algorithms and the notion of proximity as the aggregation operation at the higher level than similarity matrices is performed. The approach is verified on two datasets: a small synthetic and real-world gene dataset
Abstract. We propose a method for global validation of gene cluster-ings. The method selects a set o...
We present a novel approach to the clustering of gene expression patterns based on the mutual connec...
Abstract Background Data clustering analysis has been extensively applied to extract information fro...
AbstractThe approach to identify clusters of genes represented both by expression values and Gene On...
Abstract:- In recent years, many technologies that are used to analyze genes were proposed. Huge amo...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Nowadays, Gene Ontology has been used widely by many researchers for biological data mining and info...
Clustering is a challenging research task which could benefit a wide range of practical applications...
Abstract: The extraction of fuzzy association rules for the description of dependencies and interac...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
AbstractWe propose a novel semi-supervised clustering method called GO Fuzzy c-means, which enables ...
We propose a method for global validation of gene clusterings. The method selects a set of informati...
The Gene Ontology (GO) is an important knowledge resource for biologists and bioinformaticians. This...
AbstractIn a gene expression microarray data set, there could be tens or hundreds of dimensions, eac...
Abstract. We propose a method for global validation of gene cluster-ings. The method selects a set o...
We present a novel approach to the clustering of gene expression patterns based on the mutual connec...
Abstract Background Data clustering analysis has been extensively applied to extract information fro...
AbstractThe approach to identify clusters of genes represented both by expression values and Gene On...
Abstract:- In recent years, many technologies that are used to analyze genes were proposed. Huge amo...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Nowadays, Gene Ontology has been used widely by many researchers for biological data mining and info...
Clustering is a challenging research task which could benefit a wide range of practical applications...
Abstract: The extraction of fuzzy association rules for the description of dependencies and interac...
Motivation: In the interpretation of gene expression data from a group of microarray experiments tha...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
AbstractWe propose a novel semi-supervised clustering method called GO Fuzzy c-means, which enables ...
We propose a method for global validation of gene clusterings. The method selects a set of informati...
The Gene Ontology (GO) is an important knowledge resource for biologists and bioinformaticians. This...
AbstractIn a gene expression microarray data set, there could be tens or hundreds of dimensions, eac...
Abstract. We propose a method for global validation of gene cluster-ings. The method selects a set o...
We present a novel approach to the clustering of gene expression patterns based on the mutual connec...
Abstract Background Data clustering analysis has been extensively applied to extract information fro...