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首页> 外文期刊>Analytica chimica acta >Investigation of retention behaviour of non-steroidal anti-inflammatory drugs in high-performance liquid chromatography by using quantitative structure-retention relationships
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Investigation of retention behaviour of non-steroidal anti-inflammatory drugs in high-performance liquid chromatography by using quantitative structure-retention relationships

机译:定量结构-保留关系研究非甾体类抗炎药在高效液相色谱中的保留行为

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In this paper,a quantitative structure-retention relationship (QSRR) method is employed to model the retention behaviour in reversed-phase high-performance liquid chromatography of arylpropionic acid derivatives,largely used non-steroidal anti-inflammatory drugs (NSAIDs).Computed molecular descriptors and the organic modifier content in the mobile phase are associated into a comprehensive model to describe the effect of both solute structure and eluent composition on the isocratic retention of these drugs in water-acetonitrile mobile phases.Multilinear regression (MLR) combined with genetic algorithm (GA) variable selection is used to extract from a large set of computed 3D descriptors an optimal subset.Based on GA-MLR analysis,a five-dimensional QSRR model is identified.All the four selected molecular descriptors belong to the category of GEometry,Topology,and Atom-Weights Assembly (GETAWAY) descriptors.The related multilinear model exhibits a quite good fitting and predictive performance.This model is further improved using an artificial neural network (ANN) learned by error back-propagation.Finally,the ANN-based model displays a remarkably better performance as compared with the MLR counterpart and,based on external validation,is able to predict with good accuracy the behaviour of unknown arylpropionic NSAIDs in the range of mobile phase composition of analytical interest (between 35 and 75% acetonitrile (v/v)).
机译:本文采用定量结构-保留关系(QSRR)方法对芳基丙酸衍生物(主要用于非甾体类抗炎药)的反相高效液相色谱中的保留行为进行建模。流动相中的描述符和有机改性剂含量被关联到一个综合模型中,以描述溶质结构和洗脱液成分对这些药物在水-乙腈流动相中的等度保留的影响。结合遗传算法的多线性回归(GA)变量选择用于从大量计算的3D描述子中提取最佳子集。基于GA-MLR分析,确定了五维QSRR模型。所有四个选择的分子描述子均属于GEometry类别,拓扑和原子权重装配体(GETAWAY)描述符。相关的多线性模型表现出很好的拟合和预测性能最后,基于ANN的模型与MLR对应模型相比,表现出明显更好的性能,并且基于外部验证,该模型能够通过误差反向传播学习。可以很好地预测未知的芳基丙酸NSAID在可分析的流动相组成范围内(在35至75%的乙腈(v / v)之间)的行为。

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