规范化(社会学)
偏最小二乘回归
毒死蜱
均方误差
拉曼光谱
滤纸
分析化学(期刊)
生物系统
化学
数学
杀虫剂
色谱法
统计
光学
物理
生物
农学
社会学
人类学
作者
Joshua Harrington Aheto,Xingyi Huang,Chengquan Wang,Xiaoyu Tian,Yi Ren,Wang Yuena
摘要
Abstract Background Chlorpyrifos is a commonly used organophosphorus pesticide in agriculture. However, its neurotoxicity poses a huge threat to human health. In the present study, a chitosan‐modified filter paper‐based surface enhanced Raman scattering active substrate (Ch/AgNPs/paper) was fabricated and used to detect trace amounts of chlorpyrifos in 120 treated wheat samples. Results Results showed that the Ch/AgNPs/paper substrate could be used to enhance the chlorpyrifos spectral fingerprint only up to a concentration of 0.000558 mg L −1 . Following Raman spectra acquisition, three pre‐processing methods, including Savitzky–Golay (Savitsky–Golay filter with a second order polynomial) smoothing with first derivative and second derivative and normalization, were used to reduce baseline variation and increase resolutions of spectral peak features of the original spectra dataset. Then, prediction models based on partial least squares were established for detecting chlorpyrifos pesticide residue in wheat. The partial least squares model with normalization yielded optimal result, with a correlation coefficient of 0.9764, root mean square error of prediction of 1.22 mg L −1 in the prediction, and relative analysis deviation of 4.12. Five unknown samples were prepared to verify the accuracy of the prediction model. The predicted recoveries were calculated to be between 97.25% and 119.38% with an absolute t value of 0.598. The value of a t‐ test shows that the prediction model is accurate and reliable. Conclusion The present study demonstrates that the proposed method can achieve rapid detection of chlorpyrifos in wheat. © 2022 Society of Chemical Industry.
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