In this study, HS-SPME-GC–MS was applied in combination with machine learning tools to the identitation of a set of cocoa samples of different origins. Untargeted fingerprinting and profiling approaches were tested for their informative, discriminative and classification ability provided by the volatilome of the raw beans and liquors inbound at the factory in search of robust tools exploitable for long-time studies. The ability to distinguish the country of origin on both beans and liquors is not so obvious due to processing steps accompanying the transformation of the beans, but this capacity is of particular interest to the chocolate industry as both beans and liquors can enter indifferently into the processing of chocolate. Both fingerprinting (untargeted) and profiling (targeted) strategies enable to decipher of the information contained in the complex dataset and the cross- validation of the results, affording to discriminate between the origins with effective classification models.

Cocoa quality: Chemical relationship of cocoa beans and liquors in origin identitation

Eloisa Bagnulo
First
;
Camilla Scavarda;Chiara Cordero;Carlo Bicchi;Erica Liberto
2023-01-01

Abstract

In this study, HS-SPME-GC–MS was applied in combination with machine learning tools to the identitation of a set of cocoa samples of different origins. Untargeted fingerprinting and profiling approaches were tested for their informative, discriminative and classification ability provided by the volatilome of the raw beans and liquors inbound at the factory in search of robust tools exploitable for long-time studies. The ability to distinguish the country of origin on both beans and liquors is not so obvious due to processing steps accompanying the transformation of the beans, but this capacity is of particular interest to the chocolate industry as both beans and liquors can enter indifferently into the processing of chocolate. Both fingerprinting (untargeted) and profiling (targeted) strategies enable to decipher of the information contained in the complex dataset and the cross- validation of the results, affording to discriminate between the origins with effective classification models.
2023
172
113199
113206
https://www.sciencedirect.com/science/article/pii/S0963996923007445?dgcid=author
Quality, Cocoa beans and liquors, Origin identitation, Machine learning, Fingerprinting, Profiling
Eloisa Bagnulo, Camilla Scavarda, Cristian Bortolini, Chiara Cordero, Carlo Bicchi, Erica Liberto
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1918351
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