| Literature DB >> 26610494 |
Celia Garcia-Hernandez1, Cristina Medina-Plaza2, Cristina Garcia-Cabezon3, Fernando Martin-Pedrosa4, Isabel del Valle5, Jose Antonio de Saja6, Maria Luz Rodríguez-Méndez7.
Abstract
An array of electrochemical quartz crystal electrodes (EQCM) modified with nanostructured films based on phthalocyanines was developed and used to discriminate musts prepared from different varieties of grapes. Nanostructured films of iron, nickel and copper phthalocyanines were deposited on Pt/quartz crystals through the Layer by Layer technique by alternating layers of the corresponding phthalocyanine and poly-allylamine hydrochloride. Simultaneous electrochemical and mass measurements were used to study the mass changes accompanying the oxidation of electroactive species present in must samples obtained from six Spanish varieties of grapes (Juan García, Prieto Picudo, Mencía Regadío, Cabernet Sauvignon, Garnacha and Tempranillo). The mass and voltammetric outputs were processed using three-way models. Parallel Factor Analysis (PARAFAC) was successfully used to discriminate the must samples according to their variety. Multi-way partial least squares (N-PLS) evidenced the correlations existing between the voltammetric data and the polyphenolic content measured by chemical methods. Similarly, N-PLS showed a correlation between mass outputs and parameters related to the sugar content. These results demonstrated that electronic tongues based on arrays of EQCM sensors can offer advantages over arrays of mass or voltammetric sensors used separately.Entities:
Keywords: EQCM; LbL; electronic tongue; grapes; must; phthalocyanine
Year: 2015 PMID: 26610494 PMCID: PMC4701330 DOI: 10.3390/s151129233
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Results of the chemical analysis carried out by traditional chemical methods.
| Grape Variety | Sugar Content (g/L) | Brix Degree | Total Polyphenol Index. TPI | Degree 16.8 | Polyphenol Content. Folin-Ciocalteau Method (g/L) |
|---|---|---|---|---|---|
| Prieto Picudo | 224.1 | 22.89 | 19 | 13.31 | 0.46 |
| Garnacha | 187.4 | 19.68 | 15 | 11.13 | 0.38 |
| Cabernet-Sauvignon | 246.4 | 24.75 | 28 | 14.64 | 0.62 |
| Tempranillo | 209.1 | 21.53 | 28 | 12.42 | 0.52 |
| Juan García | 216.0 | 22.18 | 29 | 12.83 | 0.69 |
| Mencía Regadio | 203.3 | 21.05 | 23 | 12.08 | 0.54 |
Figure 1UV-Vis characterization of 4–20 CuPcSO3/PAH LbL bilayers. (a) UV-Vis absorption spectra; (b) Linear correlation between absorbance vs. number of bilayers.
Figure 2Response of the array of sensors towards catechol 10−3 mol·L−1 in KCl 0.1 mol·L−1. Voltammetric output (black line) and mass output (grey line) for the NiPcSO3/PAH sensor.
Figure 3(a) Voltammetric response towards catechol in KCl 0.1 mol·L−1 for the CuPcSO3/PAH sensor; (b) Mass response of the CuPcSO3/PAH sensor towards glucose 10−3 mol·L−1 in 0.01 mol·L−1 phosphate buffer (pH 7.0); (c) Mass response of the CuPcSO3/PAH sensor towards glucose 10−2 mol·L−1 in 0.01 mol·L−1 phosphate buffer (pH 7.0).
Figure 4Voltammetric (black line) and mass (grey line) response of the NiPcSO3/PAH sensor towards a must obtained from Juan García grapes.
Figure 5Voltammetric outputs of the EQCM sensors immersed in (a) Mencía Regadío; (b) Juan García grapes.
Figure 6Mass outputs of (a) Pt bare sensor immersed in Prieto Picudo; (b) FePcSO3/PAH sensor immersed in Tempranillo; (c) NiPcSO3/PAH sensor immersed in Juan García; (d) CuPcSO3/PAH sensor immersed in Cabernet.
Figure 7PARAFAC scores plot of the array obtained from (a) The voltammetric responses; (b) The mass responses. Must samples are 1: Prieto Picudo; 2: Garnacha; 3: Cabernet Saugvinon; 4: Tempranillo; 5: Juan García; and 6: Mencía Regadío.
Statistical parameters obtained for the N-PLS regression model established between the chemical parameters and the voltammetric responses of the sensors towards musts.
| Voltammetric Outputs | |||||
|---|---|---|---|---|---|
| Parameters | R2C (a) | RMSEC (b) | R2P (c) | RMSEP (d) | Number of Components |
| Sugar content | 0.997 | 0.99187 | 0.945 | 4.24917 | 4 |
| Brix degree | 0.996 | 0.09242 | 0.935 | 0.40019 | 4 |
| Degree 16.8 | 0.997 | 0.05894 | 0.946 | 0.25147 | 4 |
| TPI | 0.992 | 0.46538 | 0.983 | 0.68089 | 3 |
| Polyphenolic content | 0.998 | 0.33442 | 0.989 | 1.11841 | 3 |
| Folin-Ciocalteau method | |||||
(a) Squared correlation coefficient in calibration; (b) Root Mean Square Error of Calibration; (c) Squared correlation coefficient in prediction; (d) Root Mean Square Error of Prediction.
Statistical parameters obtained for the N-PLS regression model established between the chemical parameters and the mass responses of the sensors towards musts.
| Mass Outputs | |||||
|---|---|---|---|---|---|
| Parameters | R2C (a) | RMSEC (b) | R2P (c) | RMSEP (d) | Number of Components |
| Sugar content | 0.941 | 4.45005 | 0.839 | 7.31293 | 4 |
| Brix degree | 0.972 | 0.00176 | 0.865 | 0.00291 | 4 |
| Degree 16.8 | 0.941 | 0.26438 | 0.840 | 0.43420 | 4 |
| TPI | 0.961 | 1.02511 | 0.845 | 2.04940 | 5 |
| Polyphenolic content | 0.965 | 1.91428 | 0.921 | 3.0353 | 5 |
| Folin-Ciocalteau method | |||||
(a) Squared correlation coefficient in calibration; (b) Root Mean Square Error of Calibration; (c) Squared correlation coefficient in prediction; (d) Root Mean Square Error of Prediction.