Background: The search for cluster structure in microarray datasets is a base problem for the so-called “-omic sciences”. A difficult problem in clustering is how to handle data with a manifold structure, i.e. data that is not shaped in the form of compact clouds of points, forming arbitrary shapes or paths embedded in a highdimensional space, as could be the case of some gene expression datasets. Results: In this work we introduce the Penalized k-Nearest-Neighbor-Graph (PKNNG) based metric, a new tool for evaluating distances in such cases. The new metric can be used in combination with most clustering algorithms. The PKNNG metric is based on a two-step procedure: first it constructs the k-Nearest-Neighbor-Graph of the dataset of interes...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
Abstract Background Clustering is a popular data exploration technique widely used in microarray dat...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Background The search for cluster structure in microarray datasets is a base problem for the so-cal...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
In this work we use the recently introduced PKNNG metric, associated with a simple Hierarchical Clus...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
BACKGROUND: The availability of microarrays measuring thousands of genes simultaneously across hundr...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Clustering genes into groups that exhibit similar expression patterns is one of the most fundamental...
The visualization of cluster solutions in gene expression data analysis gives practitioners an under...
Background The availability of microarrays measuring thousands of genes simultaneously across hundre...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
Abstract Background Clustering is a popular data exploration technique widely used in microarray dat...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...
Background The search for cluster structure in microarray datasets is a base problem for the so-cal...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
In this work we use the recently introduced PKNNG metric, associated with a simple Hierarchical Clus...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
BACKGROUND: The availability of microarrays measuring thousands of genes simultaneously across hundr...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Clustering genes into groups that exhibit similar expression patterns is one of the most fundamental...
The visualization of cluster solutions in gene expression data analysis gives practitioners an under...
Background The availability of microarrays measuring thousands of genes simultaneously across hundre...
Abstract: Hierarchical clustering is widely used to find patterns in multi-dimensional datasets, es...
Abstract Background Clustering is a popular data exploration technique widely used in microarray dat...
AbstractIn this work, we assess the suitability of cluster analysis for the gene grouping problem co...