Ribeiro J. S., Augusto, Salva T. J. G., Thomaziello R. A., Ferreira
M. M. C., "Prediction of sensory properties of Brazilian Arabica roasted
coffees by headspace solid phase microextraction-gas chromatography and
partial least squares". Anal. Chim. Acta, 634(2),
172-179 (Feb 2009).
[Article]
Abstract.
Volatile compounds in fifty-eight Arabica roasted coffee samples from
Brazil were analyzed by SPME-GC-FID and SPME-GC-MS, and the results were
compared with those from sensory evaluation. The main purpose was to investigate
the relationships between the volatile compounds from roasted coffees and
certain sensory attributes, including body, flavor, cleanliness and overall
quality. Calibration models for each sensory attribute based on chromatographic
profiles were developed by using partial least squares (PLS) regression.
Discrimination of samples with different overall qualities was done by
using partial least squares-discriminant analysis (PLS-DA). The alignment
of chromatograms was performed by the correlation optimized warping (COW)
algorithm. Selection of peaks for each regression model was performed by
applying the ordered predictors selection (OPS) algorithm in order to take
into account only significant compounds. The results provided by the calibration
models are promising and demonstrate the feasibility of using this methodology
in on-line or routine applications to predict the sensory quality of unknown
Brazilian Arabica coffee samples.
According to the PLS-DA on chromatographic profiles of different quality
samples, compounds 3-methypropanal, 2-methylfuran, furfural, furfuryl formate,
5-methyl-2-furancarboxyaldehyde, 4-ethylguaiacol, 3-methylthiophene, 2-furanmethanol
acetate, 2-ethyl-3,6-dimethylpyrazine, 1-(2-furanyl)-2-butanone and three
others not identified compounds can be considered as possible markers for
the coffee beverage overall quality.
Keywords.
Processed Coffee; Solid Phase Microextraction; Correlation Optimized
Warping; Principal Component Analysis; Partial Least Squares.
Keywords Plus.