Preparation of agar nanospheres: comparison of response surface and artificial neural network modeling by a genetic algorithm approach

Carbohydr Polym. 2015 May 20:122:314-20. doi: 10.1016/j.carbpol.2014.12.031. Epub 2014 Dec 31.

Abstract

Multivariate nature of drug loaded nanospheres manufacturing in term of multiplicity of involved factors makes it a time consuming and expensive process. In this study genetic algorithm (GA) and artificial neural network (ANN), two tools inspired by natural process, were employed to optimize and simulate the manufacturing process of agar nanospheres. The efficiency of GA was evaluated against the response surface methodology (RSM). The studied responses included particle size, poly dispersity index, zeta potential, drug loading and release efficiency. GA predicted greater extremum values for response factors compared to RSM. However, real values showed some deviations from predicted data. Appropriate agreement was found between ANN model predicted and real values for all five response factors with high correlation coefficients. GA was more successful than RSM in optimization and along with ANN were efficient tools in optimizing and modeling the fabrication process of drug loaded in agar nanospheres.

Keywords: Agar nanospheres; Artificial Neural network; Bupropion; Genetic algorithm; Response surface methodology.

MeSH terms

  • Agar / chemistry*
  • Algorithms*
  • Bupropion / metabolism*
  • Drug Liberation*
  • Nanospheres / chemistry*
  • Neural Networks, Computer*
  • Surface Properties

Substances

  • Bupropion
  • Agar