Abstract Background Clustering is a popular data exploration technique widely used in microarray data analysis. Most conventional clustering algorithms, however, generate only one set of clusters independent of the biological context of the analysis. This is often inadequate to explore data from different biological perspectives and gain new insights. We propose a new clustering model that can generate multiple versions of different clusters from a single dataset, each of which highlights a different aspect of the given dataset. Results By applying our SigCalc algorithm to three yeast Saccharomyces cerevisiae datasets we show two results. First, we show that different sets of clusters can be generated from the same dataset using different s...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...
Identification of co-expressed genes sharing similar biological behaviours is an essential step in f...
AbstractIn microarray gene expression data, clusters may hide in certain subspaces. For example, a s...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
In this work, we assess the suitability of cluster analysis for the gene grouping problem confronted...
"In this work, we modify the superparamagnetic clustering algorithm (SPC) by adding an extra weight ...
Motivation: Various clustering methods have been applied to microarray gene expression data for iden...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
We wished to quantify the state-of-the-art of our understanding of clusters in microarray data. To d...
As of today, bioinformatics is one of the most exciting fields of scientific research. There is a wi...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Motivation: Unsupervised analysis of microarray gene expres-sion data attempts to find biologically ...
Abstract. Background: The scale and complexity of genomic data lend themselves to analysis using s...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...
Identification of co-expressed genes sharing similar biological behaviours is an essential step in f...
AbstractIn microarray gene expression data, clusters may hide in certain subspaces. For example, a s...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
In this work, we assess the suitability of cluster analysis for the gene grouping problem confronted...
"In this work, we modify the superparamagnetic clustering algorithm (SPC) by adding an extra weight ...
Motivation: Various clustering methods have been applied to microarray gene expression data for iden...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
We wished to quantify the state-of-the-art of our understanding of clusters in microarray data. To d...
As of today, bioinformatics is one of the most exciting fields of scientific research. There is a wi...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Motivation: Unsupervised analysis of microarray gene expres-sion data attempts to find biologically ...
Abstract. Background: The scale and complexity of genomic data lend themselves to analysis using s...
Many clustering techniques have been proposed for the analysis of gene expression data obtained from...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...
Identification of co-expressed genes sharing similar biological behaviours is an essential step in f...
AbstractIn microarray gene expression data, clusters may hide in certain subspaces. For example, a s...