Tabaraki R, Khayamian T, Ensafi A A
Department of Chemistry, Isfahan University of Technology, Isfahan 84154, Iran.
J Mol Graph Model. 2006 Sep;25(1):46-54. doi: 10.1016/j.jmgm.2005.10.012. Epub 2005 Dec 5.
A wavelet neural network (WNN) model in quantitative structure property relationship (QSPR) was developed for predicting solubility of 25 anthraquinone dyes in supercritical carbon dioxide over a wide range of pressures (70-770 bar) and temperatures (291-423 K). A large number of descriptors were calculated with Dragon software and a subset of calculated descriptors was selected from 18 classes of Dragon descriptors with a stepwise multiple linear regression (MLR) as a feature selection technique. Six calculated and two experimental descriptors, pressure and temperature, were selected as the most feasible descriptors. The selected descriptors were used as input nodes in a wavelet neural network (WNN) model. The wavelet neural network architecture and its parameters were optimized simultaneously. The data was randomly divided to the training, prediction and validation sets. The predictive ability of the model was evaluated using validation data set. The root mean squares error (RMSE) and mean absolute errors were 0.339 and 0.221, respectively, for the validation data set. The performance of the WNN model was also compared with artificial neural network (ANN) model and the results showed the superiority of the WNN over ANN model.
开发了一种用于定量构效关系(QSPR)的小波神经网络(WNN)模型,以预测25种蒽醌染料在70 - 770巴的宽压力范围和291 - 423 K的温度范围内在超临界二氧化碳中的溶解度。使用Dragon软件计算了大量描述符,并采用逐步多元线性回归(MLR)作为特征选择技术,从18类Dragon描述符中选择了一部分计算得到的描述符。选择了六个计算得到的描述符以及两个实验描述符(压力和温度)作为最可行的描述符。所选描述符被用作小波神经网络(WNN)模型的输入节点。同时对小波神经网络架构及其参数进行了优化。将数据随机划分为训练集、预测集和验证集。使用验证数据集评估模型的预测能力。验证数据集的均方根误差(RMSE)和平均绝对误差分别为0.339和0.221。还将WNN模型的性能与人工神经网络(ANN)模型进行了比较,结果表明WNN模型优于ANN模型。