Artificial neural networks as alternative tool for minimizing error predictions in manufacturing ultradeformable nanoliposome formulations.

Journal: Drug development and industrial pharmacy
Published Date:

Abstract

This work was aimed at determining the feasibility of artificial neural networks (ANN) by implementing backpropagation algorithms with default settings to generate better predictive models than multiple linear regression (MLR) analysis. The study was hypothesized on timolol-loaded liposomes. As tutorial data for ANN, causal factors were used, which were fed into the computer program. The number of training cycles has been identified in order to optimize the performance of the ANN. The optimization was performed by minimizing the error between the predicted and real response values in the training step. The results showed that training was stopped at 10 000 training cycles with 80% of the pattern values, because at this point the ANN generalizes better. Minimum validation error was achieved at 12 hidden neurons in a single layer. MLR has great prediction ability, with errors between predicted and real values lower than 1% in some of the parameters evaluated. Thus, the performance of this model was compared to that of the MLR using a factorial design. Optimal formulations were identified by minimizing the distance among measured and theoretical parameters, by estimating the prediction errors. Results indicate that the ANN shows much better predictive ability than the MLR model. These findings demonstrate the increased efficiency of the combination of ANN and design of experiments, compared to the conventional MLR modeling techniques.

Authors

  • José M León Blanco
    a Department of Industrial Management Science, School of Engineering , Universidad de Sevilla , Seville , Spain.
  • Pedro L González-R
    a Department of Industrial Management Science, School of Engineering , Universidad de Sevilla , Seville , Spain.
  • Carmen Martina Arroyo García
    b Department of Pharmaceutical Technology, Faculty of Pharmacy , Universidad de Sevilla , Seville , Spain.
  • María José Cózar-Bernal
    b Department of Pharmaceutical Technology, Faculty of Pharmacy , Universidad de Sevilla , Seville , Spain.
  • Marcos Calle Suárez
    a Department of Industrial Management Science, School of Engineering , Universidad de Sevilla , Seville , Spain.
  • David Canca Ortiz
    a Department of Industrial Management Science, School of Engineering , Universidad de Sevilla , Seville , Spain.
  • Antonio María Rabasco Álvarez
    b Department of Pharmaceutical Technology, Faculty of Pharmacy , Universidad de Sevilla , Seville , Spain.
  • María Luisa González Rodríguez
    b Department of Pharmaceutical Technology, Faculty of Pharmacy , Universidad de Sevilla , Seville , Spain.