Web Release Date: May 17,
Targeted Profiling: Quantitative Analysis of 1H NMR Metabolomics Data




and

Chenomx Inc., Edmonton, Alberta, Canada, and Metabolomics Research Centre, University of Calgary, Calgary, Canada
Received for review January 31, 2006. Accepted April 17, 2006.
Abstract:
Extracting meaningful information from complex spectroscopic data of metabolite mixtures is an area of active
research in the emerging field of "metabolomics", which
combines metabolism, spectroscopy, and multivariate
statistical analysis (pattern recognition) methods. Chemometric analysis and comparison of 1H NMR1 spectra is
commonly hampered by intersample peak position and
line width variation due to matrix effects (pH, ionic
strength, etc.). Here a novel method for mixture analysis
is presented, defined as "targeted profiling". Individual
NMR resonances of interest are mathematically modeled
from pure compound spectra. This database is then
interrogated to identify and quantify metabolites in complex spectra of mixtures, such as biofluids. The technique
is validated against a traditional "spectral binning" analysis on the basis of sensitivity to water suppression
(presaturation, NOESY-presaturation, WET, and CPMG),
relaxation effects, and NMR spectral acquisition times (3,
4, 5, and 6 s/scan) using PCA pattern recognition analysis. In addition, a quantitative validation is performed
against various metabolites at physiological concentrations (9
M-8 mM). "Targeted profiling" is highly stable
in PCA-based pattern recognition, insensitive to water
suppression, relaxation times (within the ranges examined), and scaling factors; hence, direct comparison of
data acquired under varying conditions is made possible.
In particular, analysis of metabolites at low concentration
and overlapping regions are well suited to this analysis.
We discuss how targeted profiling can be applied for
mixture analysis and examine the effect of various acquisition parameters on the accuracy of quantification.
Download the full text: PDF | HTML