Literature DB >> 32889133

1H NMR chemometric models for classification of Czech wine type and variety.

Anna Mascellani1, Gokce Hoca1, Marek Babisz2, Pavel Krska2, Pavel Kloucek1, Jaroslav Havlik3.   

Abstract

A set of 917 wines of Czech origin were analysed using nuclear magnetic resonance spectroscopy (NMR) with the aim of building and evaluating multivariate statistical models and machine learning methods for the classification of 6 types based on colour and residual sugar content, 13 wine grape varieties and 4 locations based on 1H NMR spectra. The predictive models afforded greater than 93% correctness for classifying dry and medium dry, medium, and sweet white wines and dry red wines. The trained Random Forest (RF) model classified Pinot noir with 96% correctness, Blaufränkisch 96%, Riesling 92%, Cabernet Sauvignon 77%, Chardonnay 76%, Gewürtztraminer 60%, Hibernal 60%, Grüner Veltliner 52%, Pinot gris 48%, Sauvignon Blanc 45%, and Pálava 40%. Pinot blanc and Chardonnay, varieties that are often mistakenly interchanged, were discriminated with 71% correctness. The findings support chemometrics as a tool for predicting important features in wine, particularly for quality assessment and fraud detection.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  (1)H NMR; 2,3-Butanediol (Compound CID: 262); Acetate (Compound CID: 175); Acetoacetate (Compound CID: 6971017); Acetoin (Compound CID: 179); Alanine (Compound CID: 5950); Catechin (Compound CID: 9064); Chemometrics; Chlorogenate (Compound CID: 1794427); Choline (Compound CID: 305); Epicatechin (Compound CID: 72276); Ethanol (Compound CID: 702); Ethyl Acetate (Compound CID: 8857); Formate (Compound CID: 283); Fructose (Compound CID: 2723872); Gallate (Compound CID: 370); Glucose (Compound CID: 5793); Glutamate (Compound CID: 33032); Glycerol (Compound CID: 753); Histidin (Compound CID: 6274); Isobutanol (PubChem CID: 6560); Isoleucine (Compound CID: 6306); Isopentanol (Compound CID: 31260); Lactate (Compound CID: 612); Leucine (Compound CID: 6106); Methanol (Compound CID: 887); Methionine (Compound CID: 876); Myo-Inositol (Compound CID: 892); Phenethyl alcohol (Compound CID: 57361413); Phenylalanine (Compound CID: 6140); Proline (Compound CID: 145742); Pyruvate (Compound CID: 107735); Succinate (Compound CID: 160419); Tartrate (Compound CID: 3806114); Trigonellin (Compound CID: 5570); Turanose (Compound CID: 5460935); Tyrosine (Compound CID: 6057); Uridine (Compound CID: 6029); Wine analysis; Wine classification; p-Hydroxyphenylacetic acid (Compound CID: 127); randomForest

Mesh:

Year:  2020        PMID: 32889133     DOI: 10.1016/j.foodchem.2020.127852

Source DB:  PubMed          Journal:  Food Chem        ISSN: 0308-8146            Impact factor:   7.514


  2 in total

1.  Combination of two analytical techniques improves wine classification by Vineyard, Region, and vintage.

Authors:  Alexandra A Crook; Diana Zamora-Olivares; Fatema Bhinderwala; Jade Woods; Michelle Winkler; Sebastian Rivera; Cassandra E Shannon; Holden R Wagner; Deborah L Zhuang; Jessica E Lynch; Nathan R Berryhill; Ron C Runnebaum; Eric V Anslyn; Robert Powers
Journal:  Food Chem       Date:  2021-03-10       Impact factor: 7.514

Review 2.  NMR in the Service of Wine Differentiation.

Authors:  Marko Viskić; Luna Maslov Bandić; Ana-Marija Jagatić Korenika; Ana Jeromel
Journal:  Foods       Date:  2021-01-08
  2 in total

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