Department of Chemistry, Sensors and Biosensors Group, Universitat Autònoma de Barcelona, Edifici Cn, 08193 Bellaterra, Barcelona, Spain.
Talanta. 2012 Sep 15;99:544-51. doi: 10.1016/j.talanta.2012.06.031. Epub 2012 Jun 20.
This work reports the application of a BioElectronic Tongue (BioET) in the estimation of polyphenol content in wine. The approach used an array of enzyme biosensors capable of giving a wide and complete response of the analyzed species, plus a chemometric processing tool able to interpret the chemical signals and extract meaningful data from the complex readings. In our case, the proposed BioET was formed by an array of four voltammetric enzymatic biosensors based on epoxy-graphite composites, one blank electrode and the other three bulk-modified with tyrosinase and laccase on one side, and copper nanoparticles on the other; these modifiers were used in order to incorporate differentiated or catalytic response to different polyphenols present in wine and aimed to the determination of its total polyphenol content value. The obtained voltammetric responses were pre-processed employing the Fast Fourier Transform (FFT); this was used to compress the relevant information whereas the obtained coefficients fed an Artificial Neural Network (ANN) model that accomplished the quantification of total polyphenol content. For comparison purposes, obtained polyphenol content was compared against the one assessed by two different reference methods: Folin-Ciocalteu and UV polyphenol index (I(280)); good prediction ability was attained with correlation coefficients higher than 0.949 when comparing against reference methods. Qualitative discrimination of individual polyphenols found in wine was also assessed by means of Principal Component Analysis which allowed the discrimination of the individual polyphenols under study.
本工作报道了生物电子舌(BioET)在葡萄酒中多酚含量估计中的应用。该方法使用了一系列能够对被分析物进行广泛而完整响应的酶生物传感器阵列,以及一个能够解释化学信号并从复杂读数中提取有意义数据的化学计量学处理工具。在我们的案例中,所提出的 BioET 由四个基于环氧石墨复合材料的伏安酶生物传感器阵列组成,一个空白电极和另外三个在一侧用酪氨酸酶和漆酶进行了体修饰,另一侧则用铜纳米粒子进行了体修饰;这些修饰剂用于将不同的或催化的响应纳入葡萄酒中存在的不同多酚中,并旨在确定其总多酚含量值。获得的伏安响应采用快速傅里叶变换(FFT)进行预处理;这用于压缩相关信息,而获得的系数则为人工神经网络(ANN)模型提供输入,以完成总多酚含量的定量。为了比较目的,将获得的多酚含量与两种不同参考方法评估的多酚含量进行了比较:福林-希奥考尔特和紫外多酚指数(I(280));当与参考方法进行比较时,相关系数高于 0.949,达到了良好的预测能力。通过主成分分析还评估了葡萄酒中个体多酚的定性区分,该分析允许对所研究的个体多酚进行区分。