A review of multivariate calibration methods applied to biomedical analysis |
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Authors: | Graciela M. Escandar Patricia C. Damiani Alejandro C. Olivieri |
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Affiliation: | a Departamento de Química Analitica, Facultad de Ciencias Bioquímicas y Farmacéuticas, Universidad National de Rosario, Suipacha 531, Rosario (2000), Argentina b Laboratorio de Control de Calidad de Medicamentos, Cátedra de Química Analítica I, Facultad de Bioquímica y Ciencias Biológicas, Universidad National del Litoral, Ciudad Universitaria, S3000ZAA, Santa Fe, Argentina |
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Abstract: | The determination of the contents of therapeutic drugs, metabolites and other important biomedical analytes in biological samples is usually performed by using high-performance liquid chromatography (HPLC). Modern multivariate calibration methods constitute an attractive alternative, even when they are applied to intrinsically unselective spectroscopic or electrochemical signals. First-order (i.e., vectorized) data are conveniently analyzed with classical chemometric tools such as partial least-squares (PLS). Certain analytical problems require more sophisticated models, such as artificial neural networks (ANNs), which are especially able to cope with non-linearities in the data structure. Finally, models based on the acquisition and processing of second- or higher-order data (i.e., matrices or higher dimensional data arrays) present the phenomenon known as “second-order advantage”, which permits quantitation of calibrated analytes in the presence of interferents. The latter models show immense potentialities in the field of biomedical analysis. Pertinent literature examples are reviewed. |
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Keywords: | Multivariate calibration methods Biomedical analysis First- and higher-order data |
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