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多元校正中纯组分和干扰物光谱的有效利用。

Efficient use of pure component and interferent spectra in multivariate calibration.

机构信息

BIOSYST-MeBioS, KU Leuven, Heverlee-Leuven, Belgium.

出版信息

Anal Chim Acta. 2013 May 17;778:15-23. doi: 10.1016/j.aca.2013.03.045. Epub 2013 Apr 1.

Abstract

Partial Least Squares (PLS) is by far the most popular regression method for building multivariate calibration models for spectroscopic data. However, the success of the conventional PLS approach depends on the availability of a 'representative data set' as the model needs to be trained for all expected variation at the prediction stage. When the concentration of the known interferents and their correlation with the analyte of interest change in a fashion which is not covered in the calibration set, the predictive performance of inverse calibration approaches such as conventional PLS can deteriorate. This underscores the need for calibration methods that are capable of building multivariate calibration models which can be robustified against the unexpected variation in the concentrations and the correlations of the known interferents in the test set. Several methods incorporating 'a priori' information such as pure component spectra of the analyte of interest and/or the known interferents have been proposed to build more robust calibration models. In the present study, four such calibration techniques have been benchmarked on two data sets with respect to their predictive ability and robustness: Net Analyte Preprocessing (NAP), Improved Direct Calibration (IDC), Science Based Calibration (SBC) and Augmented Classical Least Squares (ACLS) Calibration. For both data sets, the alternative calibration techniques were found to give good prediction performance even when the interferent structure in the test set was different from the one in the calibration set. The best results were obtained by the ACLS model incorporating both the pure component spectra of the analyte of interest and the interferents, resulting in a reduction of the RMSEP by a factor 3 compared to conventional PLS for the situation when the test set had a different interferent structure than the one in the calibration set.

摘要

偏最小二乘法(PLS)是迄今为止用于构建光谱数据多元校正模型最流行的回归方法。然而,传统 PLS 方法的成功与否取决于是否有“代表性数据集”,因为模型需要在预测阶段针对所有预期的变化进行训练。当已知干扰物的浓度及其与感兴趣分析物的相关性以校准集中未涵盖的方式变化时,传统 PLS 等逆校准方法的预测性能可能会恶化。这凸显了需要开发能够构建多元校正模型的方法,这些模型能够针对测试集中已知干扰物的浓度和相关性的意外变化进行稳健化处理。已经提出了几种结合“先验”信息(例如感兴趣的分析物和/或已知干扰物的纯组分光谱)的方法,以构建更稳健的校正模型。在本研究中,针对两个数据集,针对其预测能力和稳健性,对四种这样的校正技术进行了基准测试:净分析物预处理(NAP)、改进直接校正(IDC)、基于科学的校正(SBC)和增强经典最小二乘(ACLS)校正。对于两个数据集,发现替代校正技术即使在测试集中的干扰物结构与校正集中的不同时,也能提供良好的预测性能。通过包含感兴趣的分析物和干扰物的纯组分光谱的 ACLS 模型,可以获得最佳结果,与校正集中的干扰物结构不同时,与传统 PLS 相比,RMSEP 降低了 3 倍。

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