首页> 外文期刊>Journal of the Iranian Chemical Society >FTIR spectroscopy coupled with multivariate classification methods to identify different powdered infant formulas adulterated with melamine and cyanuric acid
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FTIR spectroscopy coupled with multivariate classification methods to identify different powdered infant formulas adulterated with melamine and cyanuric acid

机译:FTIR光谱与多变量分类方法相结合,以鉴定掺入三聚氰胺和氰尿酸的不同粉末婴儿配方

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摘要

Fourier transform infrared spectroscopy (FTIR) is a nondestructive, simple, rapid, and cheap measurement technique for analysis of many multicomponent chemical systems, e.g., detection of adulterants in food samples. In this respect, this study proposes combining FTIR spectroscopy with multivariate classification methods for classification and discrimination of different samples of infant formulas adulterated by melamine or/and cyanuric acid. Different parametric and non-parametric multivariate classification methods including the linear discriminant analysis (LDA), partial least squares-discriminant analysis (PLS-DA), soft independent modeling of class analogy (SIMCA), K-nearest neighbors (KNN), and classification and regression tree (CART) approaches were used to classify the recorded FTIR data. Assessing the performance of the multivariate methods according to their sensitivity, specificity and percent of correct prediction results demonstrated that coupling FTIR spectroscopy with multivariate classification can be applied as a rapid and powerful technique to the simultaneous detection of melamine and cyanuric acid in powdered infant formulas. This combinatorial method is efficient for adulterant concentrations as low as 0.0001 w/w%.
机译:傅里叶变换红外光谱(FTIR)是一种非破坏性,简单,快速,廉价的测量技术,用于分析许多多组分化学体系,例如,检测食品样品中的掺杂剂。在这方面,该研究提出了与多变量分类方法组合的FTIR光谱与由三聚氰胺或/和氰尿酸掺杂的婴儿公式的不同样品分类和辨别。不同的参数和非参数化多变量分类方法,包括线性判别分析(LDA),局部最小二乘判别分析(PLS-DA),类比喻的软独立建模(SIMCA),K-最近邻居(KNN)和分类和回归树(购物车)方法用于分类记录的FTIR数据。评估多元方法的性能根据其敏感性,特异性和正确的预测结果的百分比证明了具有多变量分类的FTIR光谱可以作为快速和强大的技术应用于同时检测粉末婴儿配方中的三聚氰胺和氰尿酸。这种组合方法对于低至0.0001w / w%的掺杂剂浓度是有效的。

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