10.3389/fpls.2018.00538.s003 Kevin Schwahn Kevin Schwahn Zoran Nikoloski Zoran Nikoloski Image3_Data Reduction Approaches for Dissecting Transcriptional Effects on Metabolism.TIF Frontiers 2018 E. coli S. cerevisiae A. thaliana partial correlation principal component analysis metabolomics data reduction regulation 2018-04-20 05:58:58 Figure https://frontiersin.figshare.com/articles/figure/Image3_Data_Reduction_Approaches_for_Dissecting_Transcriptional_Effects_on_Metabolism_TIF/6165431 <p>The availability of high-throughput data from transcriptomics and metabolomics technologies provides the opportunity to characterize the transcriptional effects on metabolism. Here we propose and evaluate two computational approaches rooted in data reduction techniques to identify and categorize transcriptional effects on metabolism by combining data on gene expression and metabolite levels. The approaches determine the partial correlation between two metabolite data profiles upon control of given principal components extracted from transcriptomics data profiles. Therefore, they allow us to investigate both data types with all features simultaneously without doing preselection of genes. The proposed approaches allow us to categorize the relation between pairs of metabolites as being under transcriptional or post-transcriptional regulation. The resulting classification is compared to existing literature and accumulated evidence about regulatory mechanism of reactions and pathways in the cases of Escherichia coli, Saccharomycies cerevisiae, and Arabidopsis thaliana.</p>