Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal of attention in the scientific community. While bioinformaticians have proposed new clustering methods that take advantage of characteristics of the gene expression data, the medical community has a preference for using "classic" clustering methods. There have been no studies thus far performing a large-scale evaluation of different clustering methods in this context. Results/Conclusion We present the first large-scale analysis of seven different clustering methods and four proximity measures for the analysis of 35 cancer gene expression data sets. Our results reveal that the finite mixture of Gaussians, followed closely by k-means, exhibi...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
RNA-Seq is becoming the standard technology for large-scale gene expression level measurements, as i...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Cluster analysis is usually the first step adopted to unveil information from gene expression data. ...
BACKGROUND:Clustering of gene expression data is widely used to identify novel subtypes of cancer. P...
Cancer diagnosis and prognosis has been significantly impacted by understandings of gene expression ...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
Abstracts--Data Mining has become an important topic in effective analysis of gene expression data d...
RNA-Seq is becoming the standard technology for large-scale gene expression level measurements, as i...
Abstract Background Cluster analysis is an integral part of high dimensional data analysis. In the c...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Background: Clustering of gene expression data is widely used to identify novel subtypes of cancer. ...
Cluster analysis is usually the first step adopted to unveil information from gene expression data. ...
BACKGROUND:Clustering of gene expression data is widely used to identify novel subtypes of cancer. P...
Cancer diagnosis and prognosis has been significantly impacted by understandings of gene expression ...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
Clustering algorithms are extensively used on patient tissue samples in order to group and visualize...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...