Artículo
pKa modeling and prediction of a series of pH indicators through genetic algorithm-least square support vector regression
Fecha de publicación:
04/2010
Editorial:
Elsevier Science
Revista:
Chemometrics and Intelligent Laboratory Systems
ISSN:
0169-7439
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
The pKa values of a series of 107 indicators have been modeled by means of a quantitative structure–property relationship (QSPR) approach based on physicochemical descriptors and different variable selection and regression methods. A genetic algorithm/least square support vector regression (GA-LSSVR) model gave the most accurate estimations/predictions, with squared correlation coefficients of 0.90 and 0.89 for the training and test set compounds, respectively. The prediction ability of this model was found to be superior to that based on support vector machine regression alone, revealing the important effect of selecting suitabledescriptors during a QSPR modeling. Moreover, the GA-LSSVR model showed higher predictive capability than linear methods, demonstrating the influence of nonlinearity on the modeling of pKa values, an extremely useful parameter in the analytical sciences.
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Articulos(INIFTA)
Articulos de INST.DE INV.FISICOQUIMICAS TEORICAS Y APLIC.
Articulos de INST.DE INV.FISICOQUIMICAS TEORICAS Y APLIC.
Citación
Goodarzi, Mohammad; Freitas, Matheus P.; Wu, Chih H.; Duchowicz, Pablo Román; pKa modeling and prediction of a series of pH indicators through genetic algorithm-least square support vector regression; Elsevier Science; Chemometrics and Intelligent Laboratory Systems; 101; 2; 4-2010; 102-109
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