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首页> 外文期刊>Food Chemistry >Rapid and sensitive SERS detection of melamine in milk using Ag nanocube array substrate coupled with multivariate analysis
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Rapid and sensitive SERS detection of melamine in milk using Ag nanocube array substrate coupled with multivariate analysis

机译:使用AG纳米型阵列基质与多变量分析耦合的快速和敏感的SERs检测牛奶中的三聚氰胺

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摘要

In this study, a facile Ag nanocube (NC) array substrate was fabricated for rapid SERS detection of melamine in milk. This easily-prepared substrate exhibited high Raman enhancement factor (-1.02 x 105) and good reproducibility with -10.75% spot-to-spot variation in Raman intensity. Our proposed method can detect melamine as low as 0.01 ppm in standard solutions and 0.5 ppm in real milk samples after a simple one-step solvent extraction. Two multivariate analysis tools including partial least squares and support vector machines (SVM) were explored to develop reliable regression models for quantitative SERS analysis of melamine. By comparison, SVM regression models exhibited better predictive performance, especially in liquid milk, with root mean square error (RMSE) of calibration = 5.5783, coefficient of determination (R2) of calibration = 0.9807, RMSE of prediction = 1.9636, and R2 of prediction = 0.9736. Hence, this study offers a rapid and sensitive detection of adulterant melamine in milk samples.
机译:在这项研究中,一个浅显的Ag纳米立方体(NC)阵列基板,制作用于在牛奶快速SERS检测三聚氰胺。这很容易地制备的衬底显示出高的拉曼增强因子(-1.02×105),并用在拉曼强度-10.75%点与光点的变化,重复性好。我们提出的方法可以检测三聚氰胺低至在标准溶液为0.01ppm和一个简单的一步溶剂萃取后0.5ppm的实牛奶样品英寸两个多变量分析工具,包括偏最小二乘和支持向量机(SVM)进行了探讨开发可靠的回归模型进行三聚氰胺定量分析SERS。通过比较,SVM回归模型表现出更好的预测性能,尤其是在液体牛奶,具有校准= 5.5783的根均方误差(RMSE),校准= 0.9807的确定的系数(R 2),预测= 1.9636的RMSE,和预测的R2 = 0.9736。因此,这项研究提供了掺假的三聚氰胺的牛奶样品中快速,灵敏的检测。

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