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首页> 外文期刊>European journal of pharmaceutics and biopharmaceutics: official journal of Arbeitsgemeinschaft fuer Pharmazeutische Verfahrenstechnik e.V >Optimization of controlled release nanoparticle formulation of verapamil hydrochloride using artificial neural networks with genetic algorithm and response surface methodology
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Optimization of controlled release nanoparticle formulation of verapamil hydrochloride using artificial neural networks with genetic algorithm and response surface methodology

机译:遗传算法和响应面法人工神经网络优化盐酸维拉帕米控释纳米粒的制备

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This study was performed to optimize the formulation of polymer-lipid hybrid nanoparticles (PLN) for the delivery of an ionic water-soluble drug, verapamil hydrochloride (VRP) and to investigate the roles of formulation factors. Modeling and optimization were conducted based on a spherical central composite design. Three formulation factors, i.e., weight ratio of drug to lipid (X-1), and concentrations of Tween 80 (X-2) and Pluronic F68 (X-3), were chosen as independent variables. Drug loading efficiency (Y-1) and mean particle size (Y-2) of PLN were selected as dependent variables. The predictive performance of artificial neural networks (ANN) and the response surface methodology (RSM) were compared. As ANN was found to exhibit better recognition and generalization capability over RSM, multi-objective optimization of PLN was then conducted based upon the validated ANN models and continuous genetic algorithms (GA). The optimal PLN possess a high drug loading efficiency (92.4%, w/w) and a small mean particle size (similar to 100 nm). The predicted response variables matched well with the observed results. The three formulation factors exhibited different effects on the properties of PLN. ANN in coordination with continuous GA represent an effective and efficient approach to optimize the PLN formulation of VRP with desired properties. (C) 2015 Elsevier B.V. All rights reserved.
机译:进行这项研究是为了优化聚合物-脂质杂化纳米颗粒(PLN)的配制,以递送离子型水溶性药物维拉帕米盐酸盐(VRP),并研究配制因子的作用。基于球形中心复合设计进行建模和优化。选择三个配方因子,即药物与脂质的重量比(X-1),吐温80(X-2)和Pluronic F68(X-3)的浓度作为自变量。选择PLN的载药效率(Y-1)和平均粒径(Y-2)作为因变量。比较了人工神经网络(ANN)和响应面方法(RSM)的预测性能。由于发现ANN具有比RSM更好的识别和泛化能力,因此,基于已验证的ANN模型和连续遗传算法(GA),对PLN进行了多目标优化。最佳的PLN具有较高的载药效率(92.4%,w / w)和较小的平均粒径(类似于100 nm)。预测的响应变量与观察到的结果非常吻合。这三个配方因素对PLN的性能表现出不同的影响。人工神经网络与连续GA协同代表了一种有效且有效的方法,可优化具有所需属性的VRP的PLN配方。 (C)2015 Elsevier B.V.保留所有权利。

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