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Simultaneous spectrophotometric determination of maltol, ethyl maltol, vanillin and ethyl vanillin in foods by multivariate calibration and artificial neural networks

机译:多元校正和人工神经网络光度法同时测定食品中的麦芽酚,乙基麦芽酚,香兰素和乙基香兰素

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Maltol (MAL), ethyl maltol (EMA), vanillin (VAN) and ethyl vanillin (EVA) are food additives, and they have well defined UV spectra. However, these overlapped seriously, and it is difficult to determine them individually from their mixtures without a pre-separation. In this paper, chemometric approaches were applied to resolve the overlapping spectra and to determine these compounds simultaneously. The analysis of these four compounds was facilitated by the use of an orthogonal array data set consisting of absorption spectra in the 200-350 nm ranges obtained from a calibration set of mixtures containing these compounds. With this dataset, seven different chemometric models were built, such as classical least squares (CLS), principal components regression (PCR), partial least squares (PLS), and artificial neural networks (ANN). These chemometric models were then tested by the use of a validation dataset constructed from synthetic solutions of these four compounds. The analytical performance of these chemometric methods was characterized by relative prediction errors (RPE) and recoveries. The proposed methods were successfully applied to the analysis of commercial food samples. It was found that the radial basis function artificial neural networks (RBF-ANN) gave better results than other chemometric methods, PLS, PCR, DPLS, and DPCR also give satisfactory results, while CLS and DCLS perform poorer. It was also found that there was no advantage to pre-treat spectra by taking derivatives. The four compounds, when taken individually, behaved linearly in the 1.0-20.0 mg l~(-1) concentration range, and the limits of detection (LOD) for MAL, EMA, VAN and EVA were 0.39, 0.56, 0.49 and 0.38 mg l~(-1), respectively.
机译:麦芽酚(MAL),乙基麦芽酚(EMA),香兰素(VAN)和乙基香兰素(EVA)是食品添加剂,它们具有明确的紫外线光谱。然而,它们严重重叠,并且如果不进行预分离就很难从混合物中单独确定它们。在本文中,化学计量学方法用于解析重叠光谱并同时确定这些化合物。通过使用正交阵列数据集可以方便地分析这四种化合物,该数据集由200-350 nm范围内的吸收光谱组成,该光谱是从包含这些化合物的混合物的校准集中获得的。利用该数据集,建立了七个不同的化学计量模型,例如经典最小二乘(CLS),主成分回归(PCR),偏最小二乘(PLS)和人工神经网络(ANN)。然后通过使用由这四种化合物的合成溶液构成的验证数据集来测试这些化学计量模型。这些化学计量学方法的分析性能以相对预测误差(RPE)和回收率为特征。所提出的方法已成功地应用于商业食品样品的分析。发现径向基函数人工神经网络(RBF-ANN)的结果优于其他化学计量学方法,PLS,PCR,DPLS和DPCR的结果也令人满意,而CLS和DCLS的结果较差。还发现通过采用导数对光谱进行预处理没有优势。单独服用时,这四种化合物在1.0-20.0 mg l〜(-1)浓度范围内呈线性变化,MAL,EMA,VAN和EVA的检出限(LOD)为0.39、0.56、0.49和0.38 mg l〜(-1)。

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