Journal article
Exploratory analysis of high-throughput metabolomic data
CD Wijetunge, Z Li, I Saeed, J Bowne, AL Hsu, U Roessner, A Bacic, SK Halgamuge
Metabolomics | SPRINGER | Published : 2013
Abstract
In order to make sense of the sheer volume of metabolomic data that can be generated using current technology, robust data analysis tools are essential. We propose the use of the growing self-organizing map (GSOM) algorithm and by doing so demonstrate that a deeper analysis of metabolomics data is possible in comparison to the widely used batch-learning self-organizing map, hierarchical cluster analysis and partitioning around medoids algorithms on simulated and real-world time-course metabolomic datasets. We then applied GSOM to a recently published dataset representing metabolome response patterns of three wheat cultivars subject to a field simulated cyclic drought stress. This novel and i..
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Awarded by University of Melbourne
Funding Acknowledgements
The wheat metabolome analysis was supported by the Australian Centre for Plant Functional Genomics, funded by grants from the Australian Research Council and the Grains Research and Development Corporation, the South Australian Government, the University of Melbourne, the University of Adelaide and the University of Queensland and the Victorian Government through the Victorian Centre for Plant Functional Genomics. Work on the development of near-unsupervised learning algorithms was supported by the Australian Research Council (Grant number: DP1096296).