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A review of multivariate calibration methods applied to biomedical analysis
Authors:Graciela M. Escandar  Patricia C. Damiani  Alejandro C. Olivieri
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
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.
Keywords:Multivariate calibration methods   Biomedical analysis   First- and higher-order data
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