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首页> 外文期刊>Pharmaceutics >Optimization of Salbutamol Sulfate Dissolution from Sustained Release Matrix Formulations Using an Artificial Neural Network
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Optimization of Salbutamol Sulfate Dissolution from Sustained Release Matrix Formulations Using an Artificial Neural Network

机译:使用人工神经网络从缓释基质配方中优化硫酸沙丁胺醇的溶解度

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An artificial neural network was used to optimize the release of salbutamol sulfate from hydrophilic matrix formulations. Model formulations to be used for training, testing and validating the neural network were manufactured with the aid of a central composite design with varying the levels of Methocel® K100M, xanthan gum, Carbopol® 974P and Surelease® as the input factors. In vitro dissolution time profiles at six different sampling times were used as target data in training the neural network for formulation optimization. A multi layer perceptron with one hidden layer was constructed using Matlab®, and the number of nodes in the hidden layer was optimized by trial and error to develop a model with the best predictive ability. The results revealed that a neural network with nine nodes was optimal for developing and optimizing formulations. Simulations undertaken with the training data revealed that the constructed model was useable. The optimized neural network was used for optimization of formulation with desirable release characteristics and the results indicated that there was agreement between the predicted formulation and the manufactured formulation. This work illustrates the possible utility of artificial neural networks for the optimization of pharmaceutical formulations with desirable performance characteristics.
机译:使用人工神经网络来优化硫酸沙丁胺醇从亲水性基质配方中的释放。在中央复合设计的帮助下,制造了用于训练,测试和验证神经网络的模型配方,其中该复合配方的水平有所不同,例如Methocel ® K100M,黄原胶,Carbopol ® 974P和Surelease ®作为输入因子。在训练神经网络进行配方优化时,将六个不同采样时间的体外溶出时间曲线用作目标数据。利用Matlab ®构造了一个具有一个隐藏层的多层感知器,并通过反复试验对隐藏层中的节点数进行了优化,从而开发出具有最佳预测能力的模型。结果表明,具有九个节点的神经网络是开发和优化配方的最佳选择。使用训练数据进行的模拟表明所构建的模型是可用的。优化的神经网络用于优化具有所需释放特性的制剂,结果表明预测的制剂与制造的制剂之间存在一致性。这项工作说明了人工神经网络在优化具有所需性能特征的药物制剂方面的可能用途。

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