Quiming Noel S, Denola Nerissa L, Saito Yoshihiro, Jinno Kiyokatsu
School of Materials Science, Toyohashi University of Technology, Toyohashi, Japan.
J Sep Sci. 2008 May;31(9):1550-63. doi: 10.1002/jssc.200800077.
The development of retention prediction models for the seven ginsenosides Rf, Rg1, Rd, Re, Rc, Rb2, and Rb1 on a polyamine-bonded stationary phase in hydrophilic interaction chromatography (HILIC) is presented. The models were derived using multiple linear regression (MLR) and artificial neural network (ANN) using the logarithm of the retention factor (log k) as the dependent variable for four temperature conditions (0, 10, 25, and 40 degrees C). Using stepwise MLR, the retention of the analytes in all the temperature conditions was satisfactorily described by a two-predictor model wherein the predictors were the percentage of ACN (%ACN) in the mobile phase and local dipole index (LDI) of the compounds. These predictors account for the contribution of the solute-related variable (LDI) and the influence of the mobile phase composition (%ACN) on the retention behavior of the ginsenosides. A comparison of the models derived from both MLR and ANN revealed that the trained ANNs showed better predictive abilities than the MLR models in all temperature conditions as demonstrated by their higher R(2) values for both training and test sets and lower average percentage deviation of the predicted log k from the observed log k of the test compounds. The ANN models also showed excellent performance when applied to the prediction of the seven ginsenosides in different sample matrices.
本文介绍了在亲水作用色谱法(HILIC)中,基于多胺键合固定相,对七种人参皂苷Rf、Rg1、Rd、Re、Rc、Rb2和Rb1进行保留预测模型的开发。该模型是使用多元线性回归(MLR)和人工神经网络(ANN)推导得出的,以保留因子的对数(log k)作为因变量,研究了四种温度条件(0、10、25和40摄氏度)下的情况。使用逐步MLR方法,在所有温度条件下,分析物的保留情况都可以通过一个双预测模型得到令人满意的描述,其中预测变量为流动相中乙腈的百分比(%ACN)和化合物的局部偶极指数(LDI)。这些预测变量分别体现了溶质相关变量(LDI)的贡献以及流动相组成(%ACN)对人参皂苷保留行为的影响。对MLR和ANN得出的模型进行比较后发现,经过训练的ANN在所有温度条件下都表现出比MLR模型更好的预测能力,这体现在其训练集和测试集的R(2)值更高,以及测试化合物预测的log k与观测的log k之间的平均百分比偏差更低。当将ANN模型应用于预测不同样品基质中的七种人参皂苷时,也表现出了出色的性能。