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Rapid detection of chlorpyriphos residue in rice by surface-enhanced Raman scattering

机译:表面增强拉曼散射法快速检测水稻中的毒死pho残留量

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摘要

Surface-enhanced Raman scattering (SERS) technology coupled with a quick pre-treatment method is used to detect chlorpyriphos (CP) pesticide residue in rice. 72 rice samples containing CP pesticide residue were prepared for SERS spectra acquirement and GC-MS measurement. The lowest detection concentration of CP pesticide in rice is below 0.506 mg L-1 by SERS technology. Three methods, i.e. Standard Normal Variate (SNV), Multiple Scattering Correction (MSC) and normalization, were used to preprocess the original SERS spectra, and the prediction models of Partial Least Squares (PLS) were established for detecting CP pesticide residue in rice. The PLS model with normalization is optimal, with correlation coefficient (Rp) of 0.9734, root mean square error of prediction (RMSEP) of 1.76 mg L-1 in the prediction, and relative analysis deviation (RPD) of 4.58, which is higher than 3. Six unknown samples were prepared to verify the accuracy of the prediction model. The absolute values of relative deviation were calculated to be between 2.64% and 4.47%, and the predicted recoveries were calculated to be between 96.59% and 104.69%. The value of a T test shows that the prediction model is accurate and reliable. This study demonstrates that the method can achieve a rapid detection of CP pesticide residue in rice.
机译:表面增强拉曼散射(SERS)技术与快速预处理方法相结合,可用于检测水稻中的毒死pho(CP)农药残留。制备了72种含有CP农药残留的大米样品,用于SERS光谱采集和GC-MS测量。用SERS技术检测稻米中CP农药的最低浓度低于0.506 mg L-1。分别采用标准正态变异数(SNV),多重散射校正(MSC)和归一化三种方法对原始SERS光谱进行预处理,并建立了偏最小二乘(PLS)预测模型来检测水稻中的CP农药残留。归一化的PLS模型是最佳的,相关系数(Rp)为0.9734,预测的预测均方根误差(RMSEP)为1.76 mg L-1,相对分析偏差(RPD)为4.58,高于3.准备了六个未知样本以验证预测模型的准确性。相对偏差的绝对值经计算在2.64%和4.47%之间,并且预测的回收率在96.59%和104.69%之间。 T检验的值表明预测模型是准确可靠的。这项研究表明,该方法可以快速检测水稻中的CP农药残留。

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