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采用中心复合设计法研制并优化阿米卡星固体脂质纳米粒。

Development and optimization of solid lipid nanoparticles of amikacin by central composite design.

机构信息

Department of Pharmaceutics, Isfahan University of Medical Sciences, Iran.

出版信息

J Liposome Res. 2010 Jun;20(2):97-104. doi: 10.3109/08982100903103904.

Abstract

Solid lipid nanoparticles (SLNs) have been studied as a drug-delivery system for the controlling of drug release. These colloidal systems have many important advantages, such as biocompatibility, good tolerability, and ease of scale-up. In the preparation of SLNs, many factors are involved in the characteristics of the particles, such as particle size, drug loading, and zeta potential. In this study, fractional factorial design was applied to examine which variables affect the physicochemical properties of amikacin SLNs. Study was continued by a statistical central composite design (CCD) to minimize particle size and maximize drug-loading efficiency of particles. The results showed that three quantitative factors, including the amount of lipid phase, ratio of drug to lipid, and volume of aqueous phase, were the most important variables on studied responses. The best predicted model for particle size was the quadratic model, and for drug-loading efficiency, was the linear model without any significant lack of fit. Optimum condition was achieved when the ratio of drug to lipid was set at 0.5, the amount of lipid phase at 314 mg, and the volume of aqueous phase at 229 mL. The optimized particle size was 149 +/- 4 nm and the drug-loading efficiency 88 +/- 5%. Polydispersity index was less than 0.3. The prepared particles had spherical shape, and the drug release from nanoparticles continued for 144 hours (6 days) without significant burst effect.

摘要

固体脂质纳米粒 (SLNs) 已被研究作为一种控制药物释放的药物传递系统。这些胶体系统具有许多重要的优点,如生物相容性、良好的耐受性和易于扩大规模。在 SLNs 的制备中,许多因素涉及到颗粒的特性,如粒径、载药量和zeta 电位。在本研究中,采用部分因子设计来考察哪些变量会影响阿米卡星 SLNs 的理化性质。然后通过统计学中心复合设计 (CCD) 继续研究,以最小化粒径并最大化颗粒的载药效率。结果表明,三个定量因素,包括脂质相的量、药物与脂质的比例和水相的体积,是对研究结果影响最大的变量。粒径的最佳预测模型是二次模型,而载药效率的最佳预测模型是线性模型,没有明显的不拟合。当药物与脂质的比例设定为 0.5、脂质相的量为 314mg 和水相的量为 229mL 时,达到了最佳条件。优化后的粒径为 149±4nm,载药效率为 88±5%。多分散指数小于 0.3。所制备的颗粒呈球形,纳米粒中的药物释放持续 144 小时(6 天),没有明显的突释效应。

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