Explorase: Multivariate exploratory analysis and visualization for systems biology

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Journal of Statistical Software, ISSN: 1548-7660, Vol: 25, Issue: 9, Page: 1-23

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Lawrence, Michael; Cook, Dianne; Lee, Eun-Kyung; Babka, Heather; Wurtele, Eve S.
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Computer Science; Mathematics; Decision Sciences; bioconductor; bioinformatics; microarray; graphical user interface; exploratory data analysis; interactive graphics; visualization; metabolomics; proteomics
article description
The datasets being produced by high-throughput biological experiments, such as microarrays, have forced biologists to turn to sophisticated statistical analysis and visualization tools in order to understand their data. We address the particular need for an open-source exploratory data analysis tool that applies numerical methods in coordination with interactive graphics to the analysis of experimental data. The software package, known as explorase, provides a graphical user interface (GUI) on top of the R platform for statistical computing and the GGobi software for multivariate interactive graphics. The GUI is designed for use by biologists, many of whom are unfamiliar with the R language. It displays metadata about experimental design and biological entities in tables that are sortable and filterable. There are menu shortcuts to the analysis methods implemented in R, including graphical interfaces to linear modeling tools. The GUI is linked to data plots in GGobi through a brush tool that simultaneously colors rows in the entity information table and points in the GGobi plots. explorase is an R package publicly available from Bioconductor and is a tool in the MetNet platform for the analysis of systems biology data.