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Independent components in spectroscopic analysis of complex mixtures
Authors:Yulia B Monakhova  Sergey A Astakhov  Svetlana P Mushtakova
Affiliation:a Department of Chemistry, Saratov State University, Astrakhanskaya 83, Saratov, 410012 Russia
b UCL Institute of Neurology, London, WC1N 3BG, UK
Abstract:We applied two methods of “blind” spectral decomposition (MILCA and SNICA) to quantitative and qualitative analyses of UV absorption spectra of several non-trivial mixture types. Both methods use the concept of statistical independence and aim at the reconstruction of minimally dependent components from a linear mixture. We examined mixtures of major ecotoxicants (aromatic and polyaromatic hydrocarbons), amino acids and complex mixtures of vitamins in a veterinary drug. Both MICLA and SNICA were able to recover concentrations and individual spectra with minimal errors comparable with instrumental noise. In most cases their performance was similar to or better than that of other chemometric methods such as MCR-ALS, SIMPLISMA, RADICAL, JADE and FastICA. These results suggest that the ICA methods used in this study are suitable for real life applications.
Keywords:Multivariate curve resolution  Independent component analysis  MILCA  SNICA  Vitamins  Polyaromatic hydrocarbons
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