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Multiway analysis methods applied to the fluorescence excitation-emission dataset for the simultaneous quantification of valsartan and amlodipine in tablets

机译:多道分析方法应用于荧光激发 - 发射数据集,用于同时定量缬沙坦和片剂中的氨基氨基

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In this study, excitation-emission matrix datasets, which have strong overlapping bands, were processed by using four different chemometric calibration algorithms consisting of parallel factor analysis, Tucker3, three-way partial least squares and unfolded partial least squares for the simultaneous quantitative estimation of valsartan and amlodipine besylate in tablets. In analyses, preliminary separation step was not used before the application of parallel factor analysis Tucker3, three-way partial least squares and unfolded partial least squares approaches for the analysis of the related drug substances in samples. Three-way excitation-emission matrix data array was obtained by concatenating excitation-emission matrices of the calibration set, validation set, and commercial tablet samples. The excitation-emission matrix data array was used to get parallel factor analysis, Tucker3, threeway partial least squares and unfolded partial least squares calibrations and to predict the amounts of valsartan and amlodipine besylate in samples. For all the methods, calibration and prediction of valsartan and amlodipine besylate were performed in the working concentration ranges of 0.25-4.50 mu g/mL. The validity and the performance of all the proposed methods were checked by using the validation parameters. From the analysis results, it was concluded that the described two-way and three-way algorithmic methods were very useful for the simultaneous quantitative resolution and routine analysis of the related drug substances in marketed samples. (C) 2017 Elsevier B.V. All rights reserved.
机译:在该研究中,通过使用由并行因子分析,Tucker3,三通部分最小二乘和展开的偏心最小二乘组成的四种不同的化学计量校准算法来处理具有强的重叠带的激发发射矩阵数据集缬沙坦和氨氯堇菜在片剂中。在分析中,在施加平行因子分析Tucker3之前,不使用初步分离步骤,三元部分最小二乘和展开的偏最小二乘法用于分析样品中的相关药物。通过连接校准集,验证集和商业平板样本的激励排放矩阵获得三向激励发射矩阵数据阵列。激发发射矩阵数据阵列用于获得平行因子分析,Tucker3,三路部分最小二乘和展开的部分最小二乘校准,并预测样品中的缬沙坦和氨氯菊酯的量。对于所有方法,在0.25-4.50μmg/ ml的加工浓度范围内进行缬沙坦和氨氯氏素苯磺酸盐的校准和预测。通过使用验证参数检查所有提出方法的有效性和性能。从分析结果来看,得出结论,所述双向和三元算法方法对于销售样品中相关药物物质的同时定量分辨率和常规分析非常有用。 (c)2017年Elsevier B.V.保留所有权利。

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