Towards obtaining more information from gas chromatography-mass spectrometric data of essential oils: an overview of mean field independent component analysis

J Chromatogr A. 2010 Jul 16;1217(29):4850-61. doi: 10.1016/j.chroma.2010.05.026. Epub 2010 May 24.

Abstract

Mean field independent component analysis (MF-ICA) along with other chemometric techniques was proposed for obtaining more information from multi-component gas chromatographic-mass spectrometric (GC-MS) signals of essential oils (mandarin and lemon as examples). Using these techniques, some fundamental problems during the GC-MS analysis of essential oils such as varying baseline, presence of different types of noise and co-elution have been solved. The parameters affecting MF-ICA algorithm were screened using a 2(5) factorial design. The optimum conditions for MF-ICA algorithm were followed by deconvolution of complex GC-MS peak clusters. The number of independent components (ICs) (chemical constituents) in each peak cluster was estimated using morphological score method. Eigenvalue profiles of evolving factor analysis (EFA) and pure variables from orthogonal projection approach (OPA) were used as initial mixing matrix (chromatograms) in iterative process. The resolved mass spectra were satisfactorily identified using NIST mass spectral search system. Finally, the results of optimized MF-ICA were compared with those obtained using multivariate curve resolution-alternating least square (MCR-ALS), multivariate curve resolution-objective function minimization (MCR-FMIN) and heuristic evolving latent projection (HELP) methods. It is demonstrated that MF-ICA can be used as an alternative method for a quick and accurate analysis of real multi-component problematic systems such as essential oils.

MeSH terms

  • Algorithms
  • Data Interpretation, Statistical
  • Gas Chromatography-Mass Spectrometry / instrumentation*
  • Oils, Volatile / analysis*
  • Plant Oils / analysis*

Substances

  • Oils, Volatile
  • Plant Oils