首页> 美国卫生研究院文献>Iranian Journal of Pharmaceutical Research : IJPR >Combined Unfolded Principal Component Analysis and Artificial Neural Network for Determination of Ibuprofen in Human Serum by Three-Dimensional Excitation–Emission Matrix Fluorescence Spectroscopy
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Combined Unfolded Principal Component Analysis and Artificial Neural Network for Determination of Ibuprofen in Human Serum by Three-Dimensional Excitation–Emission Matrix Fluorescence Spectroscopy

机译:三维激发-发射矩阵荧光光谱法结合展开的主成分分析和人工神经网络测定人血清中的布洛芬

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摘要

This study describes a simple and rapid approach of monitoring ibuprofen (IBP). Unfolded principal component analysis-artificial neural network (UPCA-ANN) and excitation-emission spectra resulted from spectrofluorimetry method were combined to develop new model in the determination of IBF in human serum samples. Fluorescence landscapes with excitation wavelengths from 235 to 265 nm and emission wavelengths in the range 300–500 nm were obtained. The figures of merit for the developed model were evaluated. High performance liquid chromatography (HPLC) technique was also used as a standard method. Accuracy of the method was investigated by analysis of the serum samples spiked with various concentration of IBF and an average relative error of prediction of 0.18% was obtained. The results indicated that the proposed method is an interesting alternative to the traditional techniques normally used for determination of IBF such as HPLC.
机译:这项研究描述了监测布洛芬(IBP)的简单快速方法。结合展开的主成分分析-人工神经网络(UPCA-ANN)和分光荧光法获得的激发-发射光谱,建立了测定人血清样品中IBF的新模型。获得激发波长为235至265 nm,发射波长为300–500 nm的荧光景观。评价了开发模型的品质因数。高效液相色谱(HPLC)技术也用作标准方法。通过分析掺入不同浓度IBF的血清样品来研究该方法的准确性,并获得0.18%的预测平均相对误差。结果表明,所提出的方法是通常用于测定IBF的传统技术(如HPLC)的有趣替代方法。

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