Background: Biclustering algorithms search for groups of genes that share the same behavior under a subset of samples in gene expression data. Nowadays, the biological knowledge available in public repositories can be used to drive these algorithms to find biclusters composed of groups of genes functionally coherent. On the other hand, a distance among genes can be defined according to their information stored in Gene Ontology (GO). Gene pairwise GO semantic similarity measures report a value for each pair of genes which establishes their functional similarity. A scatter search-based algorithm that optimizes a merit function that integrates GO information is studied in this paper. This merit function uses a term that addresses the i...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
The explosion of "omics" data over the past few decades has generated an increasing need of efficien...
Abstract Background Biclustering algorithms search for groups of genes that share the same behavior ...
Biclustering is an unsupervised machine learning technique that simultaneously clusters genes and c...
Sawannee Sutheeworapong,1,2 Motonori Ota,4 Hiroyuki Ohta,1 Kengo Kinoshita2,31Department of Biologic...
Biclustering has become a popular technique for the study of gene expression data, especially for di...
Abstract Background Several biclustering algorithms have been proposed to identify biclusters, in wh...
In gene expression data, a bicluster is a subset of genes exhibiting a consistent pattern over a sub...
Abstract\ud \ud Background\ud Biclustering techniques ...
Background: Gene Expression Data (GED) analysis poses a great challenge to the scientific community ...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
An important step in considering of gene expression data is obtained groups of genes that have simil...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Due to the increase in gene expression data sets in recent years, various data mining techniques hav...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
The explosion of "omics" data over the past few decades has generated an increasing need of efficien...
Abstract Background Biclustering algorithms search for groups of genes that share the same behavior ...
Biclustering is an unsupervised machine learning technique that simultaneously clusters genes and c...
Sawannee Sutheeworapong,1,2 Motonori Ota,4 Hiroyuki Ohta,1 Kengo Kinoshita2,31Department of Biologic...
Biclustering has become a popular technique for the study of gene expression data, especially for di...
Abstract Background Several biclustering algorithms have been proposed to identify biclusters, in wh...
In gene expression data, a bicluster is a subset of genes exhibiting a consistent pattern over a sub...
Abstract\ud \ud Background\ud Biclustering techniques ...
Background: Gene Expression Data (GED) analysis poses a great challenge to the scientific community ...
Biclustering or simultaneous clustering of both genes and conditions has generated considerable inte...
An important step in considering of gene expression data is obtained groups of genes that have simil...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Due to the increase in gene expression data sets in recent years, various data mining techniques hav...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Aim of clustering of data is to analyze gene expression data. Recently, biclustering or simultaneous...
The explosion of "omics" data over the past few decades has generated an increasing need of efficien...