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Modeling of Drug Release from Matrix Tablets with Process Variables of Microwave-Assisted Modification of Arrowroot Starch using Artificial Neural Network

机译:用人工神经网络与葛根淀粉微波辅助改性的葛根菌药物释放的建模

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The objective of this study was to model the drag release property in terms of process variables of microwave-assisted modification of arrowroot starch using artificial neural network (ANN). The water content, microwave power and heating time were used as process variables for modification of arrowroot starch and the mean dissolution time was used as dependent variable. The correlation between process variables and dependent variable was examined using feed-forward back-propagation neural networks. The ANN model was optimized by considering goodness-of-fit and crossvalidated predictability. A "leave-one-out" cross-validation revealed that the neural network model could predict MDT values from matrix tablets with a reasonable accuracy (predictive r2 of 0.824 and predictive root mean square error of 19.53). The predictive ability of these models was validated by a set of 4 formulations that were not included in the training set. The predicted and observed MDT were well correlated.
机译:本研究的目的是在使用人工神经网络(ANN)的微波辅助修饰的过程变量方面模拟阻力释放性质。使用含水量,微波功率和加热时间作为葛根修饰的过程变量,并且使用平均溶解时间作为依赖变量。使用前锋背部传播神经网络检查处理变量和依赖变量之间的相关性。通过考虑健康和交叉的可预测性来优化ANN模型。 “休留次出局”交叉验证显示神经网络模型可以从矩阵片中预测具有合理精度的MDT值(预测R2为0.824,预测的根均线误差为19.53)。这些模型的预测能力由一组不包括在训练集中的4种制剂验证。预测和观察到的MDT良好相关。

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