Graduate Program in Food Science (PPGCAL), Institute of Chemistry (IQ), Federal University of Rio de Janeiro (UFRJ), Cidade Universitária, Avenida Athos da Silveira Ramos, n. 149, Bloco A, 5° andar, Rio de Janeiro, RJ, 21941-909, Brazil.
Center for Food Analysis (NAL), Technological Development Support Laboratory (LADETEC), Federal University of Rio de Janeiro (UFRJ), Cidade Universitária, Rio de Janeiro, RJ, 21941-598, Brazil.
Sci Rep. 2022 Apr 4;12(1):5630. doi: 10.1038/s41598-022-09632-9.
In the present study a single screen-printed carbon electrode (SPCE) and chemometric techniques were utilized for forensic differentiation of Brazilian American lager beers. To differentiate Brazilian beers at the manufacturer and brand level, the classification techniques: soft independent modeling of class analogy (SIMCA), partial least squares regression discriminant analysis (PLS-DA), and support vector machines discriminant analysis (SVM-DA) were tested. PLS-DA model presented an inconclusive assignment ratio of 20%. On the other hand, SIMCA models had a 0 inconclusive rate but an sensitivity close to 85%. While the non-linear technique (SVM-DA) showed an accuracy of 98%, with 95% sensitivity and 98% specificity. The SPCE-SVM-DA technique was then used to distinguish at brand level two highly frauded beers. The SPCE coupled with SVM-DA performed with an accuracy of 97% for the classification of both brands. Therefore, the proposed electrochemicalsensor configuration has been deemed an appropriate tool for discrimination of American lager beers according to their producer and brands.
在本研究中,采用了单电极印刷碳电极(SPCE)和化学计量学技术,对巴西淡拉格啤酒进行法医鉴别。为了区分巴西啤酒的制造商和品牌,采用了分类技术:软独立建模类模拟(SIMCA)、偏最小二乘回归判别分析(PLS-DA)和支持向量机判别分析(SVM-DA)。PLS-DA 模型的不确定分配率为 20%。另一方面,SIMCA 模型的不确定率为 0,但灵敏度接近 85%。而非线性技术(SVM-DA)的准确率为 98%,灵敏度为 95%,特异性为 98%。然后,采用 SPCE-SVM-DA 技术对两个高度欺诈的啤酒品牌进行鉴别。SPCE 与 SVM-DA 结合使用,对两个品牌的分类准确率为 97%。因此,所提出的电化学传感器配置被认为是根据生产商和品牌对淡拉格啤酒进行鉴别的合适工具。