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Artificial neural networks for quantification in unresolved capillary electrophoresis peaks
Authors:Gaston Bocaz-BeneventiRosa Latorre,Marta Farková  Josef Havel
Affiliation:Department of Analytical Chemistry, Faculty of Science, Masaryk University, Kotlárská 2, 611 37 Brno, Czech Republic
Abstract:
The application of the combination of experimental design (ED) and artificial neural networks (ANNs) for the quantification of overlapped peaks in capillary zone electrophoresis is described. When the total separation cannot be achieved by separation techniques, the use of ED-ANN can be a suitable approach. The unstability of EOF causes peak shift that has to be corrected in order to apply ED-ANN methods. In this work, normalization procedure of electropherograms with consequent application of ANNs for quantification purpose was developed. Both, spectra and electropherograms can be used as multivariate data. In general, both kinds of data were found to be suitable for unresolved peaks quantification by ED-ANN approach.
Keywords:Capillary zone electrophoresis   Unresolved peaks   Experimental design   Normalization   Artificial neural networks   Quantitation
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