Jalalvand Ali R, Mahmoudi Majid, Goicoechea Hector C
Research Center of Oils and Fats, Kermanshah University of Medical Sciences Kermanshah Iran
Laboratorio de Desarrollo Analítico y Quimiometría (LADAQ), C_atedra de Química Analítica I, Universidad Nacional del Litoral Ciudad Universitaria, CC 242 (S3000ZAA) Santa Fe Argentina.
RSC Adv. 2018 Jun 27;8(41):23411-23420. doi: 10.1039/c8ra02792g. eCollection 2018 Jun 21.
For the first time, a novel analytical method based on a paper based enzymatic biosensor assisted by digital image processing and first-order multivariate calibration has been reported for rapid determination of nitrate in food samples. The platform of the biosensor includes a piece of Whatman filter paper impregnated with Griess reagent (3-nitroaniline, 1-naphthylamine and hydrochloric acid) and nitrate reductase. After dropping a distinct volume of nitrate solution onto the biosensor surface, nitrate reductase selectively reduces nitrate to nitrite and then the Griess reagent selectively reacts with nitrite to produce a red colored azo dye. Therefore, the color intensity of the produced azo dye is correlated with nitrate concentration. After image capture, the images were processed and digitized in the MATLAB environment by the use of an image processing toolbox and the vectors produced by the digital image processing step were used as inputs of the first-order multivariate calibration algorithms. Several multivariate calibration algorithms and pre-processing techniques have been used to build multivariate calibration models for verifying which technique offers the best predictions towards nitrate concentrations in synthetic samples and the best algorithm has been chosen for nitrate determination in potato, onion, carrot, cabbage and lettuce samples as real cases.
首次报道了一种基于纸质酶生物传感器的新型分析方法,该方法借助数字图像处理和一阶多元校准,用于快速测定食品样品中的硝酸盐。生物传感器平台包括一张浸有格里斯试剂(3-硝基苯胺、1-萘胺和盐酸)和硝酸还原酶的沃特曼滤纸。在向生物传感器表面滴加一定体积的硝酸盐溶液后,硝酸还原酶将硝酸盐选择性地还原为亚硝酸盐,然后格里斯试剂与亚硝酸盐选择性反应生成红色偶氮染料。因此,所产生偶氮染料的颜色强度与硝酸盐浓度相关。图像采集后,利用图像处理工具箱在MATLAB环境中对图像进行处理和数字化,并将数字图像处理步骤产生的向量用作一阶多元校准算法的输入。使用了几种多元校准算法和预处理技术来建立多元校准模型,以验证哪种技术对合成样品中的硝酸盐浓度提供最佳预测,并选择最佳算法用于实际案例中土豆、洋葱、胡萝卜、卷心菜和生菜样品中硝酸盐的测定。