Many different cluster methods are frequently used in gene expression
data analysis to find groups of co–expressed genes. However, cluster algorithms with the
ability to visualize the resulting clusters are usually preferred. The visualization of gene
clusters gives practitioners an understanding of the cluster structure of their data and
makes it easier to interpret the cluster results.
In this paper recent extensions of R package gcExplorer are presented. gc-Explorer is an interactive visualization toolbox for the investigation of the overall cluster
structure as well as single clusters. The different visualization options including arbitrary
node and panel functions are described in detail. Finally the toolbox can be used to
investigate the quality of a given clustering graphically as well as theoretically by testing
the association between a partition and a functional group under study. It is shown that gcExplorer is a very helpful tool for a general exploration
of microarray experiments. The identification of potentially interesting gene candidates or
functional groups is substantially accelerated and eased. Inferential analysis on a cluster
solution is used to judge its ability to provide insight into the underlying mechanistic
biology of the experiment