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Original Articles

Optimization of paeonol-loaded microparticle formulation by response surface methodology

, , , , , , , , & show all
Pages 677-686 | Received 26 May 2013, Accepted 21 Apr 2014, Published online: 30 Jul 2015
 

Abstract

In this study, a central composite rotatable design based on response surface methodology (RSM) was employed to design and formulate an appropriate paeonol microparticle formulation. Five levels of a three-factor, rotatable, central composite design were used to evaluate the critical formulation variables. The optimum conditions for preparing paeonol-loaded microparticles were predicted to be: polyvinyl alcohol (PVA) content (2.84%), the ratio of drug to polymer (6.88) and the stirring rate (1007.59 rpm). The optimized responses for production yield and loading efficiency were found to be 68.86% and 55.90%, respectively, and the particle size were 23.27 ± 0.76 µm and the sorting coefficient (σ) was 0.732. Furthermore, in vitro release study suggested that microparticle could be a suitable delivery system in treating skin disease for its sustained release of drug. In conclusion, RSM can be successfully used to optimize the effect of formulation variables.

Declaration of interest

The authors declare no conflicts of interest.

This project was supported by Guangdong Technology Research Center for Chinese Herbs Cosmetic of China (no. GCZX - A1007).

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