Differential sensing using synthetic receptors as mimics of the mammalian senses of taste and smell is a powerful approach for the analysis of complex mixtures. Herein, we report on the effectiveness of a cross-reactive, supramolecular, peptide-based sensing array in differentiating and predicting the composition of red wine blends. Fifteen blends of Cabernet Sauvignon, Merlot and Cabernet Franc, in addition to the mono varietals, were used in this investigation. Linear Discriminant Analysis (LDA) showed a clear differentiation of blends based on tannin concentration and composition where certain mono varietals like Cabernet Sauvignon seemed to contribute less to the overall characteristics of the blend. Partial Least Squares (PLS) Regression and cross validation were used to build a predictive model for the responses of the receptors to eleven binary blends and the three mono varietals. The optimized model was later used to predict the percentage of each mono varietal in an independent test set composted of four tri-blends with a 15% average error. A partial least square regression model using the mouth-feel and taste descriptive sensory attributes of the wine blends revealed a strong correlation of the receptors to perceived astringency, which is indicative of selective binding to polyphenols in wine.

Predicting the composition of red wine blends using an array of Multicomponent peptide-based sensors / Ghanem, Eman; Hopfer, Helene; Navarro, Andrea; Ritzer, Maxwell S.; Mahmood, Lina; Fredell, Morgan; Cubley, Ashley; Bolen, Jessica; Fattah, Rabia; Teasdale, Katherine; Lieu, Linh; Chua, Tedmund; Marini, Federico; Heymann, Hildegarde; Anslyn, Eric V.. - In: MOLECULES. - ISSN 1420-3049. - STAMPA. - 20:5(2015), pp. 9170-9182. [10.3390/molecules20059170]

Predicting the composition of red wine blends using an array of Multicomponent peptide-based sensors

MARINI, Federico;
2015

Abstract

Differential sensing using synthetic receptors as mimics of the mammalian senses of taste and smell is a powerful approach for the analysis of complex mixtures. Herein, we report on the effectiveness of a cross-reactive, supramolecular, peptide-based sensing array in differentiating and predicting the composition of red wine blends. Fifteen blends of Cabernet Sauvignon, Merlot and Cabernet Franc, in addition to the mono varietals, were used in this investigation. Linear Discriminant Analysis (LDA) showed a clear differentiation of blends based on tannin concentration and composition where certain mono varietals like Cabernet Sauvignon seemed to contribute less to the overall characteristics of the blend. Partial Least Squares (PLS) Regression and cross validation were used to build a predictive model for the responses of the receptors to eleven binary blends and the three mono varietals. The optimized model was later used to predict the percentage of each mono varietal in an independent test set composted of four tri-blends with a 15% average error. A partial least square regression model using the mouth-feel and taste descriptive sensory attributes of the wine blends revealed a strong correlation of the receptors to perceived astringency, which is indicative of selective binding to polyphenols in wine.
2015
blends; differential sensing; supramolecular sensors; biosensing techniques; least-squares analysis; models, theoretical; odorants; peptide mapping; peptides; polyphenols; smell; tannins; taste; vitis; wine; medicine (all); organic Chemistry
01 Pubblicazione su rivista::01a Articolo in rivista
Predicting the composition of red wine blends using an array of Multicomponent peptide-based sensors / Ghanem, Eman; Hopfer, Helene; Navarro, Andrea; Ritzer, Maxwell S.; Mahmood, Lina; Fredell, Morgan; Cubley, Ashley; Bolen, Jessica; Fattah, Rabia; Teasdale, Katherine; Lieu, Linh; Chua, Tedmund; Marini, Federico; Heymann, Hildegarde; Anslyn, Eric V.. - In: MOLECULES. - ISSN 1420-3049. - STAMPA. - 20:5(2015), pp. 9170-9182. [10.3390/molecules20059170]
File allegati a questo prodotto
File Dimensione Formato  
Ghanem_Predicting_2015.pdf

accesso aperto

Tipologia: Versione editoriale (versione pubblicata con il layout dell'editore)
Licenza: Creative commons
Dimensione 1.52 MB
Formato Adobe PDF
1.52 MB Adobe PDF

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/973427
Citazioni
  • ???jsp.display-item.citation.pmc??? 5
  • Scopus 24
  • ???jsp.display-item.citation.isi??? 23
social impact