Metabolomics data exploration guided by prior knowledge

Analytica Chimica Acta(2009)

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摘要
In metabolomics research, it is often important to focus the data analysis to specific areas of interest within the metabolome. In this paper, we describe the application of consensus principal component analysis (CPCA) and canonical correlation analysis (CCA) as a means to explore the relation between metabolome data and (i) biochemically related metabolites and (ii) an amino acid biosynthesis pathway. CPCA searches for major trends in the behavior of metabolite concentrations that are in common for the metabolites of interest and the remainder of the metabolome. CCA identifies the strongest correlations between the metabolites of interest and the remainder of the metabolome.
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关键词
Metabolomics,Microbiology,Multiblock analysis,Principal component analysis,Canonical correlation analysis
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