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DOI: 10.1055/s-0028-1112194
© Georg Thieme Verlag KG Stuttgart · New York
Application of Rotated PCA Models to Facilitate Interpretation of Metabolite Profiles: Commercial Preparations of St. John’s Wort
Publikationsverlauf
Received: June 4, 2008
Revised: September 26, 2008
Accepted: October 27, 2008
Publikationsdatum:
18. Dezember 2008 (online)


Abstract
This paper describes the application of orthogonal rotation of models based on principal component analysis (PCA) of 1H nuclear magnetic resonance (NMR) spectra and high-performance liquid chromatography-photo diode array detection (HPLC-PDA) profiles of natural product mixtures using extracts of antidepressive pharmaceutical preparations of St. John’s wort as an example. 1H-NMR spectroscopy of complex mixtures is often used in metabolomic, metabonomic and metabolite profiling studies for assessment of sample composition. Interpretation of the derived chemometric models may be complicated because several sample properties often contribute to each principal component and because the influence of individual metabolites may be shared by several principal components. Furthermore, extensive signal overlap in 1H-NMR spectra poses additional challenges to the interpretation of PCA models derived from such data. Orthogonal rotation of PCA models derived from 1H-NMR spectra and HPLC-PDA profiles of the extracts of St. John’s wort preparations facilitate interpretation of the model. Using the varimax criterion, rotation of loadings provides simpler conditions for understanding the influence of individual metabolites on the observed clustering. Alternatively, rotation of scores simplifies the understanding of the influence of whole metabolite profiles on the clustering of individual samples.
Key words
Hypericum perforatum L. - St. John’s wort - Clusiaceae - principal component analysis (PCA) - orthogonal rotation - metabolite profiling