Application of artificial neural networks for response surface modelling in HPLC method development

This paper discusses the usefulness of artificial neural networks (ANNs) for response surface modelling in HPLC method development. In this study, the combined effect of pH and mobile phase composition on the reversed-phase liquid chromatographic behaviour of a mixture of salbutamol (SAL) and guaip...

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Main Authors: Mohamed A. Korany, Hoda Mahgoub, Ossama T. Fahmy, Hadir M. Maher
Format: Article
Language:English
Published: Elsevier 2012-01-01
Series:Journal of Advanced Research
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2090123211000415
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spelling doaj-0efb4ee15a5f4eac953ae35c52eb74b72020-11-25T00:14:23ZengElsevierJournal of Advanced Research2090-12322090-12242012-01-0131536310.1016/j.jare.2011.04.001Application of artificial neural networks for response surface modelling in HPLC method developmentMohamed A. KoranyHoda MahgoubOssama T. FahmyHadir M. Maher This paper discusses the usefulness of artificial neural networks (ANNs) for response surface modelling in HPLC method development. In this study, the combined effect of pH and mobile phase composition on the reversed-phase liquid chromatographic behaviour of a mixture of salbutamol (SAL) and guaiphenesin (GUA), combination I, and a mixture of ascorbic acid (ASC), paracetamol (PAR) and guaiphenesin (GUA), combination II, was investigated. The results were compared with those produced using multiple regression (REG) analysis. To examine the respective predictive power of the regression model and the neural network model, experimental and predicted response factor values, mean of squares error (MSE), average error percentage (Er%), and coefficients of correlation (r) were compared. It was clear that the best networks were able to predict the experimental responses more accurately than the multiple regression analysis. http://www.sciencedirect.com/science/article/pii/S2090123211000415OptimizationHPLCArtificial neural networkMultiple regression analysisMethod development
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed A. Korany
Hoda Mahgoub
Ossama T. Fahmy
Hadir M. Maher
spellingShingle Mohamed A. Korany
Hoda Mahgoub
Ossama T. Fahmy
Hadir M. Maher
Application of artificial neural networks for response surface modelling in HPLC method development
Journal of Advanced Research
Optimization
HPLC
Artificial neural network
Multiple regression analysis
Method development
author_facet Mohamed A. Korany
Hoda Mahgoub
Ossama T. Fahmy
Hadir M. Maher
author_sort Mohamed A. Korany
title Application of artificial neural networks for response surface modelling in HPLC method development
title_short Application of artificial neural networks for response surface modelling in HPLC method development
title_full Application of artificial neural networks for response surface modelling in HPLC method development
title_fullStr Application of artificial neural networks for response surface modelling in HPLC method development
title_full_unstemmed Application of artificial neural networks for response surface modelling in HPLC method development
title_sort application of artificial neural networks for response surface modelling in hplc method development
publisher Elsevier
series Journal of Advanced Research
issn 2090-1232
2090-1224
publishDate 2012-01-01
description This paper discusses the usefulness of artificial neural networks (ANNs) for response surface modelling in HPLC method development. In this study, the combined effect of pH and mobile phase composition on the reversed-phase liquid chromatographic behaviour of a mixture of salbutamol (SAL) and guaiphenesin (GUA), combination I, and a mixture of ascorbic acid (ASC), paracetamol (PAR) and guaiphenesin (GUA), combination II, was investigated. The results were compared with those produced using multiple regression (REG) analysis. To examine the respective predictive power of the regression model and the neural network model, experimental and predicted response factor values, mean of squares error (MSE), average error percentage (Er%), and coefficients of correlation (r) were compared. It was clear that the best networks were able to predict the experimental responses more accurately than the multiple regression analysis.
topic Optimization
HPLC
Artificial neural network
Multiple regression analysis
Method development
url http://www.sciencedirect.com/science/article/pii/S2090123211000415
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