The assessment of the reliability of clusters discovered in bio-molecular data is a central issue in several bioinformatics problems. Several methods based on the concept of stability have been proposed to estimate the reliability of each individual cluster as well as the \u201doptimal\u201d number of clusters. In this conceptual framework a clustering ensemble is obtained through bootstrapping techniques, noise injection into the data or random projections into lower dimensional subspaces. A measure of the reliability of a given clustering is obtained through specific stability/reliability scores based on the similarity of the clusterings composing the ensemble. Classical stability-based methods do not provide an assessment of the statisti...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
We introduce a general technique for making statistical inference from clustering tools applied to g...
Clustering analysis of gene expression is characterized by the very high dimensionality and low car...
Motivation: Discovering new subclasses of pathologies and expression signatures related to specific...
Searching for structures in complex bio-molecular data is a central issue in several branches of bio...
The validation of clusters discovered in bio-molecular data is a central issue in bioinformatics. Re...
Stability-based methods have been successfully applied in functional genomics to the analysis of the...
Objective: Clustering algorithms may be applied to the analysis of DNA microarray data to identify ...
Background. Cluster analysis has been widely applied for investigating structure in bio-molecular...
Abstract Background The unsupervised discovery of structures (i.e. clusterings) underlying data is a...
∗ Both authors contributed equally to this work Motivation: Hierarchical clustering is a common appr...
We present a new R package for the assessment of the reliability of clusters discovered in high dime...
Background: The unsupervised discovery of structures (i.e. clusterings) underlying data is a central...
Cluster analysis has been widely applied for investigating structure in bio-molecular data: for inst...
Motivation: A measurement of cluster quality is needed to choose potential clusters of genes that co...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
We introduce a general technique for making statistical inference from clustering tools applied to g...
Clustering analysis of gene expression is characterized by the very high dimensionality and low car...
Motivation: Discovering new subclasses of pathologies and expression signatures related to specific...
Searching for structures in complex bio-molecular data is a central issue in several branches of bio...
The validation of clusters discovered in bio-molecular data is a central issue in bioinformatics. Re...
Stability-based methods have been successfully applied in functional genomics to the analysis of the...
Objective: Clustering algorithms may be applied to the analysis of DNA microarray data to identify ...
Background. Cluster analysis has been widely applied for investigating structure in bio-molecular...
Abstract Background The unsupervised discovery of structures (i.e. clusterings) underlying data is a...
∗ Both authors contributed equally to this work Motivation: Hierarchical clustering is a common appr...
We present a new R package for the assessment of the reliability of clusters discovered in high dime...
Background: The unsupervised discovery of structures (i.e. clusterings) underlying data is a central...
Cluster analysis has been widely applied for investigating structure in bio-molecular data: for inst...
Motivation: A measurement of cluster quality is needed to choose potential clusters of genes that co...
Simultaneous measurement of the expression levels of thousands to ten thousand genes in multiple tis...
We introduce a general technique for making statistical inference from clustering tools applied to g...
Clustering analysis of gene expression is characterized by the very high dimensionality and low car...