首页> 外文期刊>International Journal of Pharmaceutics >Quantitative structure-binding relationships (QSBR) and artificial neural networks: improved predictions in drug:cyclodextrin inclusion complexes.
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Quantitative structure-binding relationships (QSBR) and artificial neural networks: improved predictions in drug:cyclodextrin inclusion complexes.

机译:定量结构结合关系(QSBR)和人工神经网络:改进药物,环糊精包合物中的预测。

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摘要

The application of the principal neural network architecture, namely the multilayer perceptron (MLP), have been developed for obtaining sufficient quantitative structure-binding relationships (QSBR) with high accuracy. To this end a dataset of 17 barbiturates as guests complexing to alpha- and beta-cyclodextrins was examined and the results compared to that of Lopata et al (J. Pharm. Sci., 74, (1995)) who studied the same problem using multiple regression analysis. A series of new and improved algorithms other than the "old fashion" and problematic steepest descent were examined for training the MLP networks. The proposed methods led to substantial gain in both the prediction ability and the computation speed of the resulting models. A specific ANN architecture (4-4-1) trained with the Levenberg-Marquardt algorithm diminished the number of outliers, during its implementation to unseen data (barbiturates), to zero.
机译:已经开发了主要神经网络体系结构即多层感知器(MLP)的应用程序,以高精度获得足够的定量结构结合关系(QSBR)。为此,检查了17种巴比妥酸盐作为与α-环糊精和β-环糊精复合的客体的数据集,并将结果与​​Lopata等人(J. Pharm。Sci。,74,(1995))进行了比较,后者使用相同的方法研究了相同的问题多元回归分析。除了训练“ MLP”网络以外,还检查了一系列除“旧式”和有问题的最陡下降之外的新算法和改进算法。所提出的方法导致了所得模型的预测能力和计算速度的显着提高。使用Levenberg-Marquardt算法训练的特定ANN架构(4-4-1)在将其实现为看不见的数据(巴比妥酸盐)期间将离群值数量减少为零。

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