"In this work, we modify the superparamagnetic clustering algorithm (SPC) by adding an extra weight to the interaction formula that considers which genes are regulated by the same transcription factor. With this modified algorithm that we call SPCTF, we analyze Spellman et al. microarray data for cell cycle genes in yeast, and find clusters with a higher number of elements compared with those obtained with the SPC algorithm. Some of the incorporated genes by using SPCFT were not detected at first by Spellman et al. but were later identified by other studies, whereas several genes still remain unclassified. The clusters composed by unidentified genes were analyzed with MUSA, the motif finding using an unsupervised approach algorithm, and this allow...
Motivation: Unsupervised learning or clustering is frequently used to explore gene expression profil...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
BACKGROUND: Detection of sequence homologues represents a challenging task that is important for the...
High-density DNA arrays, used to monitor gene expression at a genomic scale, have produced vast amou...
Abstract Background Clustering is a popular data exploration technique widely used in microarray dat...
Background: Currently, clustering with some form of correlation coefficient as the gene similarity m...
Background: Cluster analysis is often used to infer regulatory modules or biological function by ass...
Currently, clustering with some form of correlation coefficient as the gene similarity metric has be...
Typically, gene expression data are formed by thousands of genes associated to tens or hundreds of ...
Gene expression analysis is becoming very important in order to understand complex living organisms....
The combined interpretation of gene expression data and gene sequences is important for the investig...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
The cell cycle is a crucial series of events that are repeated over time, allowing the cell to grow,...
Motivation: Various clustering methods have been applied to microarray gene expression data for iden...
Motivation: Unsupervised learning or clustering is frequently used to explore gene expression profil...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
BACKGROUND: Detection of sequence homologues represents a challenging task that is important for the...
High-density DNA arrays, used to monitor gene expression at a genomic scale, have produced vast amou...
Abstract Background Clustering is a popular data exploration technique widely used in microarray dat...
Background: Currently, clustering with some form of correlation coefficient as the gene similarity m...
Background: Cluster analysis is often used to infer regulatory modules or biological function by ass...
Currently, clustering with some form of correlation coefficient as the gene similarity metric has be...
Typically, gene expression data are formed by thousands of genes associated to tens or hundreds of ...
Gene expression analysis is becoming very important in order to understand complex living organisms....
The combined interpretation of gene expression data and gene sequences is important for the investig...
Abstract Background DNA microarray technology allows for the measurement of genome-wide expression p...
Microarray analysis using clustering algorithms can suffer from lack of inter-method consistency in ...
The cell cycle is a crucial series of events that are repeated over time, allowing the cell to grow,...
Motivation: Various clustering methods have been applied to microarray gene expression data for iden...
Motivation: Unsupervised learning or clustering is frequently used to explore gene expression profil...
In microarray gene expression data, clusters may hide in subspaces. Traditional clustering algorithm...
BACKGROUND: Detection of sequence homologues represents a challenging task that is important for the...