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首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Application of silver nanoparticles and principal component-artificial neural network models for simultaneous determination of levodopa and benserazide hydrochloride by a kinetic spectrophotometric method
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Application of silver nanoparticles and principal component-artificial neural network models for simultaneous determination of levodopa and benserazide hydrochloride by a kinetic spectrophotometric method

机译:纳米银和主成分-人工神经网络模型在动力学光度法同时测定左旋多巴和盐酸苄丝肼中的应用

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摘要

A multicomponent analysis method based on principal component analysis-artificial neural network model (PC-ANN) is proposed for the simultaneous determination of levodopa (LD) and benserazide hydrochloride (BH). The method is based on the reaction of levodopa and benserazide hydrochloride with silver nitrate as an oxidizing agent in the presence of PVP and formation of silver nanoparticles. The reaction monitored at analytical wavelength 440 nm related to surface plasmon resonance band of silver nanoparticles. Differences in the kinetic behavior of the levodopa and benserazide hydrochloride were exploited by using principal component analysis, an artificial neural network (PC-ANN) to resolve concentration of analytes in their mixture. After reducing the number of kinetic data using principal component analysis, an artificial neural network consisting of three layers of nodes was trained by applying a back-propagation learning rule. The optimized ANN allows the simultaneous determination of analytes in mixtures with relative standard errors of prediction in the region of 4.5 and 6.3 for levodopa and benserazide hydrochloride respectively. The results show that this method is an efficient method for prediction of these analytes.
机译:提出了一种基于主成分分析-人工神经网络模型(PC-ANN)的多组分分析方法,同时测定左旋多巴(LD)和盐酸苄丝肼(BH)。该方法是基于在PVP存在下左旋多巴和盐酸苄丝肼与硝酸银作为氧化剂的反应并形成银纳米颗粒。在与银纳米颗粒的表面等离子体共振带有关的分析波长440nm处监测反应。左旋多巴和盐酸苄丝肼的动力学行为差异通过使用主成分分析,人工神经网络(PC-ANN)来解析其混合物中分析物的浓度而得到利用。使用主成分分析减少动力学数据的数量后,通过应用反向传播学习规则对由三层节点组成的人工神经网络进行了训练。优化的人工神经网络可以同时测定混合物中的分析物,其左旋多巴和盐酸苄丝肼的相对标准预测误差分别为4.5和6.3。结果表明,该方法是预测这些分析物的有效方法。

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