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Resolution and quantification challenge of modern chemometric models in the determination of anti-migraine tablets containing ergotamine, caffeine, acetaminophen, and metoclopramide

机译:现代化学计量学模型在测定包含麦角胺,咖啡因,对乙酰氨基酚和胃复安的抗偏头痛片中的分辨率和定量挑战

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This study is a comparison between the performance of five multivariate models in the determination of the unique mixture of ergotamine (ERG), metoclopramide (MET), caffeine (CAF), and paracetamol (PAR) in laboratory-prepared mixtures and in pharmaceutical formulations. Two supervised learning machine methods—artificial neural networks (PC-ANN) preceded by principle component analysis and support vector regression (SVR)—were compared with a spectral residual augmented classical least squares (SRACLS) method, multicurve resolution alternating least squares (MCR-ALS) method, and principle component based method; partial least squares (PLS). The results showed the superiority of linear learning machine methods in handling extremely noisy and complex spectral data, especially during the determination of the challenging mixture under study. ERG (the component with a close to undetectable concentration and with the lowest ratio in the studied dosage form) was only determined using three chemometric models, with root mean squared error of prediction (RMSEP) for the proposed models of 0.0879, 0.0694, and 0.0250 for PLS, SVR and PC-ANN, respectively. In addition, the results suggest that ANN is the method of choice for the determination of mixtures with extreme conditions; for example, components with a very low contribution in the overall spectra, components with narrow informative range, and extremely nonlinear spectral data.
机译:这项研究是在确定实验室制备的混合物和药物制剂中麦角胺(ERG),胃复安(MET),咖啡因(CAF)和对乙酰氨基酚(PAR)的独特混合物的测定中五个变量模型的性能之间的比较。比较了两种监督学习机方法-人工神经网络(PC-ANN),主成分分析和支持向量回归(SVR)-与频谱残差增强经典最小二乘法(SRACLS),多曲线分辨率交替最小二乘(MCR- ALS)方法和基于主成分的方法;偏最小二乘(PLS)。结果表明,线性学习机方法在处理极其嘈杂和复杂的光谱数据方面具有优势,尤其是在确定所研究的具有挑战性的混合物期间。仅使用三种化学计量学模型确定ERG(浓度接近不可测且在所研究剂型中具有最低比例的组分),建议模型的预测均方根误差(RMSEP)为0.0879、0.0694和0.0250分别用于PLS,SVR和PC-ANN。此外,结果表明,人工神经网络是确定极端条件下混合物的首选方法。例如,在整体光谱中贡献极低的成分,信息范围窄的成分以及极非线性的光谱数据。

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