Optimization of enantiomer separation in flow-modulated comprehensive two-dimensional gas chromatography by response surface methodology coupled to artificial neural networks: Wine analysis case study

J Chromatogr A. 2022 Jul 19:1675:463189. doi: 10.1016/j.chroma.2022.463189. Epub 2022 Jun 1.

Abstract

In spite of extensive applications of flow modulated comprehensive two-dimensional gas chromatography (FM-GG × GC) in different research areas, its application in the field of chiral separation is very limited. From a practical point of view, the establishment of experimental parameters for enantiomer separations is possibly more demanding in this case. Since the carrier gas flows in both dimensions, it affects not only the separation parameters, but also the fill/flush volumes of the modulator and its working efficiency. In this context, a multivariate design of experiment was applied to find the optimum experimental parameters of a reversed fill/flush (RFF) modulator for enantiomer separation of organic compounds present in botrytized wine samples. The results were described both with response surface methodology and artificial neural networks (ANN). The enantiomeric composition of chiral compounds present in the botrytized wines was used to identify their geographical origin, by principal component analysis (PCA). In addition, the developed one-class partial least squares (OC-PLS) model enabled recognition of the wine samples from the Tokaj wine region with 93% effectiveness in the presence of other samples.

Keywords: Artificial neural networks; Central composite analysis; Chiral separation; Flow-modulated comprehensive two-dimensional gas chromatography; Tokaj wine region.

MeSH terms

  • Chromatography, Gas
  • Neural Networks, Computer
  • Principal Component Analysis
  • Stereoisomerism
  • Wine* / analysis