Planta Med 2002; 68(8): 734-738
DOI: 10.1055/s-2002-33793
Original Paper
Analysis
© Georg Thieme Verlag Stuttgart · New York

Multi-Component Metabolic Classification of Commercial Feverfew Preparations via High-Field 1H-NMR Spectroscopy and Chemometrics

Nigel J. C. Bailey1 , Julia Sampson2, 4 , Peter J. Hylands3 , Jeremy K. Nicholson1 , Elaine Holmes1
  • 1Biological Chemistry, Biomedical Sciences Division, Imperial College of Science, Technology and Medicine, University of London, South Kensington, London, United Kingdom
  • 2Department of Pharmacy, Franklin-Wilkins Building, King’s College London, Waterloo, London, United Kingdom
  • 3Oxford Natural Products plc, Cornbury Park, Charlbury, Oxfordshire, United Kingdom
  • 4Now at Oxford Natural Products plc
Further Information

Publication History

Received: October 30, 2001

Accepted: February 3, 2002

Publication Date:
09 September 2002 (online)

Preview

Abstract

There is increasing interest in evaluating the clinical efficacy of herbal medicines. However, there are significant analytical problems associated with quality control and the measurement of the overall composition of such complex, multi-component mixtures as normally required in the pharmaceutical industry. Here we describe a novel NMR spectroscopic and pattern recognition analytical approach to investigate composition and variability of a commonly used herbal medicine. 600 MHz 1H-NMR spectroscopy and principal components analysis (PCA) was used to discriminate between batches of 14 commercially available feverfew samples based on multi-component metabolite profiles. Two of the batches were significantly different from the other twelve. The twelve remaining classes could be classified into discrete groups by PCA on the basis of minor differences in overall chemical composition. NMR based pattern recognition (PR) analysis of extracts proved to be superior to PR analysis of HPLC traces of the same mixtures.This work indicates the potential value of NMR combined with PCA for the characterisation of complex natural product mixtures, and the discrimination of samples containing allegedly identical ingredients.

Abbreviations

PCA:principal components analysis

PC:principal component

PR:pattern recognition

TSP:3-(trimethylsilyl)-propionic-2,2,3,3-d 4 acid, sodium salt

References

Dr. Nigel J.C. Bailey

Biological Chemistry

Biomedical Sciences Division

Imperial College of Science,
Technology and Medicine

University of London

Sir Alexander Fleming Building

Exhibition Road


South Kensington

London. SW7 2AZ

United Kingdom

Email: nigel.bailey@ic.ac.uk

Fax: +44 020 7594 3226