The visualization of cluster solutions in gene expression data analysis gives practitioners an understanding of the cluster structure of their data and makes it easier to interpret the cluster results. Neighborhood graphs allow for visual assessment of relationships between adjacent clusters. The number of clusters in gene expression data is for biological reasons rather large. As a linear projection of the data into 2 dimensions does not scale well in the number of clusters there is a need for new visualization techniques using non-linear arrangement of the clusters. The new visualization tool is implemented in the open source statistical computing environment R. It is demonstrated on microarray data from yeast
We describe the use of a binary hierarchical clustering (BHC) framework for clustering of gene expre...
Summary: Cluster analysis plays an important role in the analysis of gene expression data since the ...
Abstract — A very effective means to study the gene networks is visualization. With rapid increase o...
The visualization of cluster solutions in gene expression data analysis gives practitioners an under...
Background: Many different cluster methods are frequently used in gene expression data analysis to f...
Many different cluster methods are frequently used in gene expression data analysis to find groups o...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Abstract: An essential step in the analysis of gene expression profile data is the detection of gene...
Clustering is commonly used in the analysis of geneexpression data to nd groups of co{expressed gene...
Background: The most common method of identifying groups of functionally related genes in microarray...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
The complexity of gene expression data sets generated from microarrays and high-throughput sequencin...
The recent development of methods for extracting precise measurements of spatial gene expression pat...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
We describe the use of a binary hierarchical clustering (BHC) framework for clustering of gene expre...
Summary: Cluster analysis plays an important role in the analysis of gene expression data since the ...
Abstract — A very effective means to study the gene networks is visualization. With rapid increase o...
The visualization of cluster solutions in gene expression data analysis gives practitioners an under...
Background: Many different cluster methods are frequently used in gene expression data analysis to f...
Many different cluster methods are frequently used in gene expression data analysis to find groups o...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Abstract: An essential step in the analysis of gene expression profile data is the detection of gene...
Clustering is commonly used in the analysis of geneexpression data to nd groups of co{expressed gene...
Background: The most common method of identifying groups of functionally related genes in microarray...
AbstractClustering algorithms have been shown to be useful to explore large-scale gene expression pr...
The complexity of gene expression data sets generated from microarrays and high-throughput sequencin...
The recent development of methods for extracting precise measurements of spatial gene expression pat...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
We describe the use of a binary hierarchical clustering (BHC) framework for clustering of gene expre...
Summary: Cluster analysis plays an important role in the analysis of gene expression data since the ...
Abstract — A very effective means to study the gene networks is visualization. With rapid increase o...