HAMSTER: visualizing microarray experiments as a set of minimum spanning trees

R Wan, L Kiseleva, H Harada, H Mamitsuka… - Source code for biology …, 2009 - Springer
R Wan, L Kiseleva, H Harada, H Mamitsuka, P Horton
Source code for biology and medicine, 2009Springer
Background Visualization tools allow researchers to obtain a global view of the
interrelationships between the probes or experiments of a gene expression (eg microarray)
data set. Some existing methods include hierarchical clustering and k-means. In recent
years, others have proposed applying minimum spanning trees (MST) for microarray
clustering. Although MST-based clustering is formally equivalent to the dendrograms
produced by hierarchical clustering under certain conditions; visually they can be quite …
Background
Visualization tools allow researchers to obtain a global view of the interrelationships between the probes or experiments of a gene expression (e.g. microarray) data set. Some existing methods include hierarchical clustering and k-means. In recent years, others have proposed applying minimum spanning trees (MST) for microarray clustering. Although MST-based clustering is formally equivalent to the dendrograms produced by hierarchical clustering under certain conditions; visually they can be quite different.
Methods
HAMSTER (Helpful Abstraction using Minimum Spanning Trees for Expression Relations) is an open source system for generating a set of MSTs from the experiments of a microarray data set. While previous works have generated a single MST from a data set for data clustering, we recursively merge experiments and repeat this process to obtain a set of MSTs for data visualization. Depending on the parameters chosen, each tree is analogous to a snapshot of one step of the hierarchical clustering process. We scored and ranked these trees using one of three proposed schemes. HAMSTER is implemented in C++ and makes use of Graphviz for laying out each MST.
Results
We report on the running time of HAMSTER and demonstrate using data sets from the NCBI Gene Expression Omnibus (GEO) that the images created by HAMSTER offer insights that differ from the dendrograms of hierarchical clustering. In addition to the C++ program which is available as open source, we also provided a web-based version (HAMSTER+) which allows users to apply our system through a web browser without any computer programming knowledge.
Conclusion
Researchers may find it helpful to include HAMSTER in their microarray analysis workflow as it can offer insights that differ from hierarchical clustering. We believe that HAMSTER would be useful for certain types of gradient data sets (e.g time-series data) and data that indicate relationships between cells/tissues. Both the source and the web server variant of HAMSTER are available from http://hamster.cbrc.jp/ .
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