4.6 Article

Modelling formulations using gene expression programming - A comparative analysis with artificial neural networks

Journal

EUROPEAN JOURNAL OF PHARMACEUTICAL SCIENCES
Volume 44, Issue 3, Pages 366-374

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.ejps.2011.08.021

Keywords

Gene expression programming; Genetic programming; Neural networks; Modelling; Formulation

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This study has investigated the utility and potential advantages of gene expression programming (GEP) - new development in evolutionary computing for modelling data and automatically generating equations that describe the cause-and-effect relationships in a system- to four types of pharmaceutical formulation and compared the models with those generated by neural networks, a technique now widely used in the formulation development. Both methods were capable of discovering subtle and non-linear relationships within the data, with no requirement from the user to specify the functional forms that should be used. Although the neural networks rapidly developed models with higher values for the ANOVA R-2 these were black box and provided little insight into the key relationships. However, GEP, although significantly slower at developing models, generated relatively simple equations describing the relationships that could be interpreted directly. The results indicate that GEP can be considered an effective and efficient modelling technique for formulation data. (C) 2011 Elsevier B.V. All rights reserved.

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