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利用人工神经网络选择性检测两种有机磷杀虫剂:毒死蜱和毒虫畏。

The use of Artificial Neural Networks for the selective detection of two organophosphate insecticides: chlorpyrifos and chlorfenvinfos.

作者信息

Istamboulie Georges, Cortina-Puig Montserrat, Marty Jean-Louis, Noguer Thierry

机构信息

Université de Perpignan Via Domitia, IMAGES EA4218, Centre de Phytopharmacie, 52 Avenue Paul Alduy, 66860 Perpignan Cedex, France.

出版信息

Talanta. 2009 Jul 15;79(2):507-11. doi: 10.1016/j.talanta.2009.04.014. Epub 2009 Apr 16.

Abstract

Amperometric acetylcholinesterase (AChE) biosensors have been developed to resolve mixtures of chlorpyrifos oxon (CPO) and chlorfenvinfos (CFV) pesticides. Three different biosensors were built using the wild type from electric eel (EE), the genetically modified Drosophila melanogaster AChE B394 and B394 co-immobilized with a phosphotriesterase (PTE). Artificial Neural Networks (ANNs) were used to model the combined response of the two pesticides. Specifically two different ANNs were constructed. The first one was used to model the combined response of B394+PTE and EE biosensors and was applied when the concentration of CPO was high and the other, modelling the combined response of B394+PTE and B394 biosensors, was applied with low concentrations of CPO. In both cases, good prediction ability was obtained with correlation coefficients better than 0.986 when the obtained values were compared with those expected for a set of six external test samples not used for training.

摘要

已开发出电流型乙酰胆碱酯酶(AChE)生物传感器来解析毒死蜱氧磷(CPO)和毒虫畏(CFV)农药混合物。使用来自电鳗(EE)的野生型、转基因黑腹果蝇AChE B394以及与磷酸三酯酶(PTE)共固定的B394构建了三种不同的生物传感器。使用人工神经网络(ANN)对两种农药的联合响应进行建模。具体构建了两种不同的人工神经网络。第一种用于对B394+PTE和EE生物传感器的联合响应进行建模,在CPO浓度较高时应用;另一种用于对B394+PTE和B394生物传感器的联合响应进行建模,在CPO浓度较低时应用。在这两种情况下,将获得的值与一组六个未用于训练的外部测试样品的预期值进行比较时,均获得了良好的预测能力,相关系数优于0.986。

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