Fatemi M H
Department of Chemistry, Faculty of Basic Science, Mazandaran University, P.O. Box 453, Babolsar, Iran.
J Chromatogr A. 2003 Jun 20;1002(1-2):221-9. doi: 10.1016/s0021-9673(03)00687-3.
Artificial neural networks (ANNs) were successfully developed for the modeling and prediction of migration indices of the 53 benzene derivatives and heterocyclic compounds in microemulsion electrokinetic chromatography. The selected descriptors that appear in multiple linear regression models are: 3D-MoRSE signal 25 unweighted, 3D-MoRSE signal 19 weighted by atomic Sanderson electronegativity, R maximal autocorrelation index lag 1 weighted by atomic mass (R1M+), R maximal autocorrelation index lag 2 weighted by polarizability (R2P+) and average atomic composition index. These descriptors were used as inputs for generated 5-4-1 networks. After training and optimization of the ANN parameters it was used to prediction of migration index of the test set compounds. The results obtained using ANNs were compared with the experimental values as well as with those obtained using regression models and showed the superiority of ANNs over regression models.
人工神经网络(ANNs)已成功用于微乳液电动色谱中53种苯衍生物和杂环化合物迁移指数的建模和预测。在多元线性回归模型中出现的选定描述符为:未加权的3D-MoRSE信号25、由原子桑德森电负性加权的3D-MoRSE信号19、由原子质量加权的滞后1的R最大自相关指数(R1M+)、由极化率加权的滞后2的R最大自相关指数(R2P+)以及平均原子组成指数。这些描述符用作生成的5-4-1网络的输入。在对人工神经网络参数进行训练和优化后,将其用于预测测试集化合物的迁移指数。将使用人工神经网络获得的结果与实验值以及使用回归模型获得的结果进行比较,结果表明人工神经网络优于回归模型。