Exploring the potential of combining chemometric approaches to model non-linear multi-way data with quantitative purposes – A case study
Second-order based calibration methods have been widely investigated capitalizing on the inherent benefits of the data structure and the decomposition models, demonstrating that second-order advantage is a property that conspires to a high likelihood success in the resolution of systems of varying c...
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Veröffentlicht in: | Analytica chimica acta 2021-01, Vol.1141, p.63-70 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Second-order based calibration methods have been widely investigated capitalizing on the inherent benefits of the data structure and the decomposition models, demonstrating that second-order advantage is a property that conspires to a high likelihood success in the resolution of systems of varying complexity. This work aims to demonstrate the applicability of a combined chemometric strategy to solve non-linear multivariate calibration systems in the presence of non-multilinear multi-way data. The determination of histamine by differential pulse voltammetry at different pH is presented as case study. The experimental system has the outstanding difficulty arisen from the large displacement along the potential axis by the pH, which was successfully overcome by implementation of the presented combined strategy. For data modeling, MCR-ALS, U-PLS/RBL and U-PCA/RBL-RBF were used. MCR-ALS allowed unraveling the non-linear behavior between the signal and the concentration, and extracting the underlying profiles of the constituent. Quantitative analysis was performed through the three models, and a comparative evaluation of the predictive performance was done. The best results were achieved with U-PCA/RBL-RBF (mean recovery = 101%) whereas, MCR-ALS yield the lowest mean recovery for all samples (70%)
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•Non-multilinear multi-way data was used for quantitative analysis.•Non-trilinear type 3 data was modeled for the first time with quantitative aims.•pH-dependence behavior of differential pulse voltammetry was used as case study.•Dual non-linear regression trend was successfully resolved through a combined chemometric technique.•Parametric and non-parametric models were implemented. |
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ISSN: | 0003-2670 1873-4324 |
DOI: | 10.1016/j.aca.2020.10.039 |