首页> 外文期刊>Polish Journal of Chemistry >Prediction of the Retention Factor in Micellar Electrokinetic Chromatography Using Computational Descriptors and an Artificial Neural Network
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Prediction of the Retention Factor in Micellar Electrokinetic Chromatography Using Computational Descriptors and an Artificial Neural Network

机译:使用计算描述符和人工神经网络预测胶束电动色谱中的保留因子

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摘要

An artificial neural network (ANN) method is proposed to calculate retention factor of analytes using structural features computed using HyperChem software.The absolute average relative deviation (AARD) and individual deviation (ID) are calculated as accuracy criteria.The accuracy of the proposed method is compared with that of previously reported least square models.The proposed method was tested on eight experimental data sets and mean (+-) standard deviation of AARDs for ANN was 10.7(+-)2.1 and those of previous models were 48.5(+-)20.4 and 130.1(+-)79.7,in which the mean differences were statistically significant (p < 0.001).The distribution of IDs sorted in three subgroups,i.e.<= 10,10-30 and > 30%,shows the superiority of the ANN over the previous models.
机译:提出了一种人工神经网络(ANN)方法,利用HyperChem软件计算的结构特征来计算分析物的保留因子,并计算绝对平均相对偏差(AARD)和个体偏差(ID)作为准确度标准。与之前报道的最小二乘模型进行了比较。该方法在8个实验数据集上进行了测试,ANN的AARDs的平均(±)标准偏差为10.7(+-)2.1,而先前模型的平均值为48.5(+-)。 )20.4和130.1(+-)79.7,其平均差异具有统计学意义(p <0.001)。ID分布在三个亚组中,即<= 10,10-30和> 30%,显示了先前模型的ANN。

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