Amirvaresi Arian, Parastar Hadi
Department of Chemistry, Sharif University of Technology, Tehran, Iran.
Department of Chemistry, Sharif University of Technology, Tehran, Iran.
Anal Chim Acta. 2021 Apr 15;1154:338308. doi: 10.1016/j.aca.2021.338308. Epub 2021 Feb 11.
In the present work, a new approach based on external parameter orthogonalization combined with support vector machine (EPO-SVM) is proposed for processing of attenuated total reflectance-Fourier transform mid-infrared (ATR-FT-MIR) spectra with the goal of solving authentication problem in saffron, the most expensive spice in the world. First, one-hundred authentic saffron samples are clustered by principal component analysis (PCA) with EPO as the best preprocessing strategy. Then, EPO-SVM is used for the detection of four commonly used plant-derived adulterants (i.e. safflower, calendula, rubia, and style) in binary mixtures (saffron and each of plant adulterants) and its performance is compared with other common classification methods. The obtained results showed that the EPO-SVM approach has a much better classification accuracy (>95%) than other methods (accuracy<89.2%). Finally, two different sample sets including mixture of saffron and four plant adulterants and commercial saffron samples are used for validation of the developed EPO-SVM model. In this regard, classification figures of merit in terms of sensitivity, specificity and accuracy were respectively 96.6%, 97.1%, and 96.8% which showed good classification performance. It is concluded that the proposed EPO-PCA and EPO-SVM approaches can be considered as reliable tools for authentication and adulteration detection in saffron samples.
在本研究中,提出了一种基于外部参数正交化结合支持向量机(EPO-SVM)的新方法,用于处理衰减全反射-傅里叶变换中红外(ATR-FT-MIR)光谱,目的是解决藏红花(世界上最昂贵的香料)的真伪鉴别问题。首先,以EPO作为最佳预处理策略,通过主成分分析(PCA)对100个正宗藏红花样本进行聚类。然后,将EPO-SVM用于检测二元混合物(藏红花与每种植物掺假物)中四种常用的植物源性掺假物(即红花、金盏花、茜草和花柱),并将其性能与其他常用分类方法进行比较。所得结果表明,EPO-SVM方法的分类准确率(>95%)远高于其他方法(准确率<89.2%)。最后,使用两个不同的样本集,包括藏红花与四种植物掺假物的混合物以及商业藏红花样本,对所开发的EPO-SVM模型进行验证。在这方面,灵敏度、特异性和准确率方面的分类品质因数分别为96.6%、97.1%和96.8%,显示出良好的分类性能。得出的结论是,所提出的EPO-PCA和EPO-SVM方法可被视为藏红花样本真伪鉴别和掺假检测的可靠工具。