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首页> 外文期刊>Analytica chimica acta >Modelling of retention of pesticides in reversed-phase high-performance liquid chromatography: Quantitative structure-retention relationships based on solute quantum-chemical descriptors and experimental (solvatochromic and spin-probe) mobile phase d
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Modelling of retention of pesticides in reversed-phase high-performance liquid chromatography: Quantitative structure-retention relationships based on solute quantum-chemical descriptors and experimental (solvatochromic and spin-probe) mobile phase d

机译:反相高效液相色谱中农药保留的建模:基于溶质量子化学描述子和实验(溶剂变色和自旋探针)流动相的定量结构-保留关系d

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摘要

A quantitative structure-retention relationship (QSRR) analysis based on multilinear regression (MLR) and artificial neural networks (ANNs) is carried out to model the combined effect of solute structure and eluent composition on the retention behaviour of pesticides in isocratic reversed-phase high-performance liquid chromatography (RP-HPLC). The octanol–water partition coefficient and four quantum chemical descriptors (the total dipole moment, the mean polarizability, the anisotropy of the polarizability and a descriptor of hydrogen-bonding based on the atomic charges on acidic and basic chemical functionalities) are considered as solute descriptors. In order to identify suitable mobile phase descriptors, encoding composition-dependent properties of both methanol- and acetonitrile-containing mobile phases, the Kamlet–Taft solvatochromic parameters (polarity–dipolarity, hydrogen-bond acidity and hydrogen-bond basicity, π*, α and β, respectively) and the 14N hyperfine-splitting constant (aN) of a spin-probe dissolved in the eluent are examined. A satisfactory description of mobile phase properties influencing the solute retention is provided by aN and β or alternatively π* and β. The two seven-parameter models resulting from combination of aN and β, or π* and β, with the solute descriptors were tested on a set of 26 pesticides representative of 10 different chemical classes in a wide range of mobile phase composition (30–60% (v/v) water–methanol and 30–70% (v/v) water–acetonitrile). Within the explored experimental range, the acidity of the eluent, as quantified by α, is almost constant, and this parameter is in fact irrelevant. The results reveal that aN and π*, that can be considered as interchangeable mobile phase descriptors, are the most influent variables in the respective models. The predictive ability of the proposed models, as tested on an external data set, is quite good (Q2 close to 0.94) when a MLR approach is used, but the modelling capability can be further improved using an artificial neural network.
机译:进行了基于多元线性回归(MLR)和人工神经网络(ANN)的定量结构-保留关系(QSRR)分析,以模拟溶质结构和洗脱液组成对农药在等度反相高压下的保留行为的综合影响。高效液相色谱(RP-HPLC)。辛醇-水分配系数和四个量子化学描述符(总偶极矩,平均极化率,极化率的各向异性和基于酸性和基本化学官能团上的原子电荷的氢键描述符)被视为溶质描述符。 。为了识别合适的流动相描述符,编码含甲醇和乙腈的流动相的成分依赖性,使用Kamlet-Taft溶剂变色参数(极性-偶极,氢键酸度和氢键碱度,π*,α分别测定了β和β)以及溶解在洗脱液中的自旋探针的14N超细分裂常数(aN)。 aN和β或π*和β提供了影响溶质保留的流动相特性的令人满意的描述。由aN和β或π*和β结合溶质描述符得到的两个七个参数模型,在一组代表10种不同化学类别的26种农药上进行了测试,其流动范围广泛(30–60 %(v / v)的水-甲醇和30–70%(v / v)的水-乙腈)。在探索的实验范围内,洗脱液的酸度(由α量化)几乎恒定,实际上该参数无关紧要。结果表明,可以认为aN和π*是可互换的流动相描述符,是各自模型中影响最大的变量。当使用MLR方法时,在外部数据集上测试的建议模​​型的预测能力非常好(Q2接近0.94),但是可以使用人工神经网络进一步提高建模能力。

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