In recent years, the development of high throughput devices for the massive parallel analyses of genomic data has lead to the generation of large amount of new biological evidences and has triggered the proliferation of data mining algorithms for the extraction of meaningful information. Microarrays for gene expression analyses are part of this revolution and provide important insight in molecular biology often in the form of coherent sets of genes representing previously uncharacterized processes. Large amount of data are continuously produced in this form, and computational approaches can significantly improve the efficient use of these results, since comparison among numbers of genes sets can give new meaningful information at no cost fr...
Microarray gene expression data is used to understand the actions of thousands of genes. Just a few ...
One of the ultimate goals of microarray gene expression data analysis in bioinformatics is to identi...
The usage of data mining techniques in research fields of computational biology include gene finding...
In recent years, the development of high throughput devices for the massive parallel analyses of gen...
In recent years, the development of high throughput devices for the massive parallel analyses of gen...
In recent years, the development of high throughput de-vices for the massive parallel analyses of ge...
In recent years, the development of high throughput de-vices for the massive parallel analyses of ge...
BACKGROUND: Grouping genes into clusters on the basis of similarity between their expression profile...
Among the many applications of microarray technology, one of the most popular is the identification ...
Background: There are many methods for analyzing microarray data that group together genes having si...
Motivation: Association pattern discovery (APD) methods have been successfully applied to gene expre...
With the rapid accumulation of biological omics datasets, decoding the underlying relationships of c...
BACKGROUND: Gene set analysis (GSA) has become a successful tool to interpret gene expression profil...
Similarity (or conversely distance) measures are at the heart of most bioinformatic applications. Wh...
As a revolutionary technology, microarrays have great potential to provide genome-wide patterns of g...
Microarray gene expression data is used to understand the actions of thousands of genes. Just a few ...
One of the ultimate goals of microarray gene expression data analysis in bioinformatics is to identi...
The usage of data mining techniques in research fields of computational biology include gene finding...
In recent years, the development of high throughput devices for the massive parallel analyses of gen...
In recent years, the development of high throughput devices for the massive parallel analyses of gen...
In recent years, the development of high throughput de-vices for the massive parallel analyses of ge...
In recent years, the development of high throughput de-vices for the massive parallel analyses of ge...
BACKGROUND: Grouping genes into clusters on the basis of similarity between their expression profile...
Among the many applications of microarray technology, one of the most popular is the identification ...
Background: There are many methods for analyzing microarray data that group together genes having si...
Motivation: Association pattern discovery (APD) methods have been successfully applied to gene expre...
With the rapid accumulation of biological omics datasets, decoding the underlying relationships of c...
BACKGROUND: Gene set analysis (GSA) has become a successful tool to interpret gene expression profil...
Similarity (or conversely distance) measures are at the heart of most bioinformatic applications. Wh...
As a revolutionary technology, microarrays have great potential to provide genome-wide patterns of g...
Microarray gene expression data is used to understand the actions of thousands of genes. Just a few ...
One of the ultimate goals of microarray gene expression data analysis in bioinformatics is to identi...
The usage of data mining techniques in research fields of computational biology include gene finding...