BackgroundMicroarray technology is increasingly being applied in biological and medical research to address a wide range of problems, such as the classification of tumors. An important statistical problem associated with tumor classification is the identification of new tumor classes using gene-expression profiles. Two essential aspects of this clustering problem are: to estimate the number of clusters, if any, in a dataset; and to allocate tumor samples to these clusters, and assess the confidence of cluster assignments for individual samples. Here we address the first of these problems.ResultsWe have developed a new prediction-based resampling method, Clest, to estimate the number of clusters in a dataset. The performance of the new and e...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...
Biclustering techniques have become very popular in cancer genetics studies, as they are tools that ...
BackgroundMicroarray technology is increasingly being applied in biological and medical research to ...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great dea...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Cancer has been identified as the leading cause of death. It is predicted that around 20-26 million ...
In just a few years, gene expression microarrays have rapidly become a standard experimental tool in...
We consider the problem of assessing the number of clusters in a limited number of tissue samples co...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
Cluster analysis of biological samples using gene expression measurements is a common task which aid...
Background Inferring cluster structure in microarray datasets is a fundamental task for the so-calle...
Clustering is an essential research problem which has received considerable attention in the researc...
Background: Inferring cluster structure in microarray datasets is a fundamental task for the so-call...
AbstractWe consider the problem of assessing the number of clusters in a limited number of tissue sa...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...
Biclustering techniques have become very popular in cancer genetics studies, as they are tools that ...
BackgroundMicroarray technology is increasingly being applied in biological and medical research to ...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great dea...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Cancer has been identified as the leading cause of death. It is predicted that around 20-26 million ...
In just a few years, gene expression microarrays have rapidly become a standard experimental tool in...
We consider the problem of assessing the number of clusters in a limited number of tissue samples co...
Machine learning techniques are increasingly popular tools for understanding complex biological data...
Cluster analysis of biological samples using gene expression measurements is a common task which aid...
Background Inferring cluster structure in microarray datasets is a fundamental task for the so-calle...
Clustering is an essential research problem which has received considerable attention in the researc...
Background: Inferring cluster structure in microarray datasets is a fundamental task for the so-call...
AbstractWe consider the problem of assessing the number of clusters in a limited number of tissue sa...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...
Biclustering techniques have become very popular in cancer genetics studies, as they are tools that ...