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Detection of melamine and cyanuric acid in feed ingredients by near infrared spectroscopy and chemometrics

机译:近红外光谱和化学计量学检测饲料原料中的三聚氰胺和氰尿酸

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This study investigated the detection of contamination of animal feed by melamine and its derivatives by rapid analytical methods. The main goal was to propose an effective tool to detect contaminantion by using multivariate calibration equations built on a large database of non-contaminated feed ingredients. Soybean meal, maize gluten and wheat gluten samples were contaminated by different percentages of melamine and cyanuric acid. The influence of these additives on near infrared (NIR) predicted values of crude protein was studied. The predicted values of protein, in terms of the adulteration percentage, were compared with those obtained by conventional methods (Kjeldahl and Dumas). The addition of the contaminant led to an increase in the protein value when measured by classical methods and to a decrease in the value when predicted by the NIR calibration models. Among the modifications in the spectral profile of affected feed was the intensity of the spectrum at about 2170 nm, characteristic of the absorption of proteins which might explain the reduction in NIR predicted protein values when contaminants were added. An important advantage of the approach is the simultaneous detection of several analytes, making it possible to detect melamine and cyanuric acid at the same time. Contaminated feed was analysed using the near infrared (NIR) general feed ingredient database. Calibration equations were developed and applied to the samples in this study to visualise their distribution with regard to the existing data set that does not contain contaminants. Contaminated samples presented global H (GH) (Mahalanobis distance) values greater than three and were easily distinguished from the rest. Both the full spectrum and a selected spectral region between 2130 nm and 2230 nm, including wavelengths relevant for discrimination, were used to develop mathematical equations to predict the protein content and to detect contaminated samples.
机译:这项研究调查了快速分析方法检测三聚氰胺及其衍生物对动物饲料的污染。主要目标是提出一个有效的工具,通过使用建立在无污染饲料成分大型数据库上的多元校准方程式来检测污染物。豆粕,玉米面筋和小麦面筋样品被不同百分比的三聚氰胺和氰尿酸污染。研究了这些添加剂对粗蛋白的近红外(NIR)预测值的影响。以掺假百分比表示的蛋白质预测值与通过常规方法(凯氏定氮法和杜马斯法)获得的预测值进行了比较。当通过经典方法测量时,污染物的添加导致蛋白质值增加,而通过NIR校准模型预测时,导致蛋白质值降低。受影响的饲料的光谱图谱变化包括在约2170 nm处的光谱强度,这是蛋白质吸收的特征,这可以解释当添加污染物时NIR预测的蛋白质值的降低。该方法的一个重要优点是可以同时检测多种分析物,从而可以同时检测三聚氰胺和氰尿酸。使用近红外(NIR)常规饲料成分数据库分析了受污染的饲料。制定了校准方程,并将其应用于本研究中的样品,以可视化它们相对于不含污染物的现有数据集的分布。被污染的样品的整体H(GH)(马哈拉诺比斯距离)值大于3,很容易与其他样品区分开。全光谱和2130 nm至2230 nm之间的选定光谱区域(包括与辨别有关的波长)均用于建立数学方程式,以预测蛋白质含量并检测受污染的样品。

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