Maximum likelihood unfolded principal component regression with residual bilinearization (MLU-PCR/RBL) for second-order multivariate calibration
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Maximum likelihood unfolded principal component regression with residual bilinearization (MLU-PCR/RBL) for second-order multivariate calibration

机译:具有用于二阶多元校准的残余双绞病(MLU-PCR / RBL)的最大似然展开的主成分回归

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AbstractA maximum likelihood model is described for performing second-order multivariate calibration with unfolded principal component regression with residual bilinearization (MLU-PCR/RBL). It differs from the conventional RBL models based on U-PCR or U-PLS (unfolded partial least-squares) in the incorporation of the measurement error information into both the U-PCR calibration and the RBL model phases. The error information is represented by the instrumental error covariance matrix. Simulations were made by adding correlated and proportional noise to synthetic systems consisting of one analyte in the presence of a calibrated and unexpected interferent, under different conditions of overlapping profiles, noise levels and noise types (correlated and proportional). The results show that MLU-PCR/RBL outperforms conventional RBL methods in prediction ability, as confirmed by a detailed study on validation samples through the average prediction error as a convenient figure of merit. Results obtained in experimental data set based on flow injection analysis and UV detection for determination of acetylsalicylic and ascorbic acids in pharmaceutical products also support the theoretical conclusions.Highlights?New second order calibration model applying maximum likelihood strategy.?Incorporation of the noise information in both calibration and RBL phases.?Evaluation in simulated data in distinct overlap conditions, noise types and levels.?Experimental results for simultaneous determinations in pharmaceutical products.?Prediction improvement in both simulated and experimental data.]]>
机译:<![CDATA [ 抽象 描述了最大似然模型,用于执行与残余双向化的展开主成分回归执行二阶多变量校准(MLU -PCR / RBL)。它与基于U-PCR或U-PLS(展开的局部最小二乘)的传统RBL模型不同,在将测量误差信息纳入U-PCR校准和RBL模型相中。错误信息由乐器错误协方差矩阵表示。通过将相关的和比例噪声添加到由校准和意外干扰的存在的合成系统,在不同的重叠简档,噪声水平和噪声类型(相关和比例)下包括一个分析物组成的合成系统来进行仿真。结果表明,如通过平均预测误差对验证样本的详细研究作为一种方便的优异图来证实,MLU-PCR / RBL以预测能力的常规RBL方法优于预测能力。基于流动注射分析和UV检测的实验数据组中获得的结果,用于测定药品中的乙酰胱氨酸和抗坏血酸和抗坏血酸的结果也支持理论的结论。 突出显示 新的二阶校准模型应用最大似然策略。 < CE:列表项ID =“U0015”> 在校准和RBL阶段的噪声信息的结合。 在不同重叠条件下的模拟数据中的评估,噪声类型和级别。 < CE:列表项ID =“U0025”> 药品同时测定的实验结果。 模拟和实验数据的预测改进。 ]]]>

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