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人工神经网络技术与线性自由能关系参数相结合用于预测液相色谱中的梯度保留时间

Combination of artificial neural network technique and linear free energy relationship parameters in the prediction of gradient retention times in liquid chromatography.

作者信息

Fatemi M H, Abraham M H, Poole C F

机构信息

Department of Chemistry, Mazandaran University, Babolsar, Iran.

出版信息

J Chromatogr A. 2008 May 9;1190(1-2):241-52. doi: 10.1016/j.chroma.2008.03.021. Epub 2008 Mar 13.

Abstract

In this work multiple linear regression (MLR) and artificial neural network (ANN) were used to predict the gradient retention times of diverse sets of organic compounds in four separate data sets. Descriptors which were used as inputs of these models are five linear free energy relationship (LFER) solute parameters including E, S, A, B and V. In the first step eight separate multiple linear regression and artificial neural network models were used to predict the gradient retention time for each gradient condition separately. Results obtained in this step reveal that there are significant relations between LFER parameters and gradient retention times of solutes in liquid chromatography. Then MLR and ANN were applied to develop more general models in which several different gradient elution conditions were used. The performances of these models are compared in terms of their standard errors and also correlation analysis. The results obtained reveal that although there are no significant differences between ANN and MLR in separate modeling of the gradient retention times, ANN has a significant superiority over MLR models in developing the general models for various gradient elution conditions. The results of sensitivity analysis on ANN models indicate that the order of importance for input terms in separate ANN models is Vx>B>S>E>A and in the case of combined ANN model is Vx>B>tg>S>E>A, which are in agreement with the order of percentage of significance terms that obtained from the MLR models.

摘要

在本研究中,采用多元线性回归(MLR)和人工神经网络(ANN)来预测四个独立数据集中不同有机化合物集的梯度保留时间。用作这些模型输入的描述符是五个线性自由能关系(LFER)溶质参数,包括E、S、A、B和V。第一步,使用八个独立的多元线性回归和人工神经网络模型分别预测每种梯度条件下的梯度保留时间。这一步获得的结果表明,LFER参数与液相色谱中溶质的梯度保留时间之间存在显著关系。然后应用MLR和ANN来开发更通用的模型,其中使用了几种不同的梯度洗脱条件。根据标准误差和相关性分析对这些模型的性能进行了比较。获得的结果表明,虽然在梯度保留时间的单独建模中,ANN和MLR之间没有显著差异,但在为各种梯度洗脱条件开发通用模型方面,ANN比MLR模型具有显著优势。对ANN模型的敏感性分析结果表明,单独的ANN模型中输入项的重要性顺序为Vx>B>S>E>A,而在组合ANN模型中为Vx>B>tg>S>E>A,这与从MLR模型获得的显著项百分比顺序一致。

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