Prediction of Aged Red Wine Aroma Properties from Aroma Chemical Composition. Partial Least Squares Regression Models
- 27 March 2003
- journal article
- research article
- Published by American Chemical Society (ACS) in Journal of Agricultural and Food Chemistry
- Vol. 51 (9) , 2700-2707
- https://doi.org/10.1021/jf026115z
Abstract
Partial least squares regression (PLSR) models able to predict some of the wine aroma nuances from its chemical composition have been developed. The aromatic sensory characteristics of 57 Spanish aged red wines were determined by 51 experts from the wine industry. The individual descriptions given by the experts were recorded, and the frequency with which a sensory term was used to define a given wine was taken as a measurement of its intensity. The aromatic chemical composition of the wines was determined by already published gas chromatography (GC)-flame ionization detector and GC-mass spectrometry methods. In the whole, 69 odorants were analyzed. Both matrixes, the sensory and chemical data, were simplified by grouping and rearranging correlated sensory terms or chemical compounds and by the exclusion of secondary aroma terms or of weak aroma chemicals. Finally, models were developed for 18 sensory terms and 27 chemicals or groups of chemicals. Satisfactory models, explaining more than 45% of the original variance, could be found for nine of the most important sensory terms (wood-vanillin-cinnamon, animal-leather-phenolic, toasted-coffee, old wood-reduction, vegetal-pepper, raisin-flowery, sweet-candy-cacao, fruity, and berry fruit). For this set of terms, the correlation coefficients between the measured and predicted Y (determined by cross-validation) ranged from 0.62 to 0.81. Models confirmed the existence of complex multivariate relationships between chemicals and odors. In general, pleasant descriptors were positively correlated to chemicals with pleasant aroma, such as vanillin, β damascenone, or (E)-β-methyl-γ-octalactone, and negatively correlated to compounds showing less favorable odor properties, such as 4-ethyl and vinyl phenols, 3-(methylthio)-1-propanol, or phenylacetaldehyde. Keywords: Wine; aroma; flavor; models; PLS; sensory descriptionKeywords
This publication has 16 references indexed in Scilit:
- Multivariate Analysis of Quality. An IntroductionMeasurement Science and Technology, 2001
- Wine Descriptive Language Supports Cognitive Specificity of Chemical SensesBrain and Language, 2001
- Clues about the Role of Methional As Character Impact Odorant of Some Oxidized WinesJournal of Agricultural and Food Chemistry, 2000
- Descriptive analysis of complex odors: reality, model or illusion?Food Quality and Preference, 1999
- DESCRIPTIVE ANALYSIS FOR WINE QUALITY EXPERTS DETERMINING APPELLATIONS BY CHARDONNAY WINE AROMAJournal of Sensory Studies, 1996
- Chemical Markers for Aroma ofVitis viniferaVar. Chardonnay Regional WinesJournal of Agricultural and Food Chemistry, 1996
- Investigation on the role played by fermentation esters in the aroma of young Spanish wines by multivariate analysisJournal of the Science of Food and Agriculture, 1995
- More clues about sensory impact of sotolon in some flor sherry winesJournal of Agricultural and Food Chemistry, 1992
- The origin of ethylphenols in winesJournal of the Science of Food and Agriculture, 1992
- THE IMPORTANCE OF LANGUAGE IN DESCRIBING PERCEPTIONSJournal of Sensory Studies, 1986