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Boosting comprehensive two-dimensional chromatography with artificial intelligence: Application to food-omics.

Authors :
Caratti, Andrea
Squara, Simone
Bicchi, Carlo
Liberto, Erica
Vincenti, Marco
Reichenbach, Stephen E.
Tao, Qingping
Geschwender, Daniel
Alladio, Eugenio
Cordero, Chiara
Source :
Trends in Analytical Chemistry: TRAC. May2024, Vol. 174, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

The unceasing evolution of analytical instrumentation determines an exponential increase of data production, which in turn boosts new cutting-edge analytical challenges, requiring a progressive integration of artificial intelligence (AI) algorithms into the instrumental data treatment software. Machine learning, deep learning, and computer vision are the most common techniques adopted to exploit the information potential of advanced analytical chemistry measures. In this paper, our primary focus is on elucidating the remarkable advantages of leveraging AI tools for comprehensive two-dimensional gas chromatography data (pre)processing. We illustrate how AI techniques can efficiently explore the complex datasets derived from multidimensional platforms combining comprehensive two-dimensional separations with mass spectrometry in the challenging application area of food-omics. Pattern recognition based on image processing, computer vision, and AI smelling are discussed by introducing the principles of operation, reviewing available tools and software solutions, and illustrating their potentials and limitations through selected applications. • Artificial Intelligence boost the informative potential of GC × GC. • Computer Vision based on chromatogram images. • AI smelling machine with GC × GC-MS predicts food aroma properties. • Advancing the explorative potential of comprehensive two-dimensional chromatography. • Augmented visualization combines visual features with chemical information. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01659936
Volume :
174
Database :
Academic Search Index
Journal :
Trends in Analytical Chemistry: TRAC
Publication Type :
Academic Journal
Accession number :
177086063
Full Text :
https://doi.org/10.1016/j.trac.2024.117669