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Strategy for reduced calibration sets to develop quantitative structure-retention relationships in high-performance liquid chromatography

机译:减少校准集的策略,以开发高效液相色谱中的定量结构-保留关系

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摘要

In high-performance liquid chromatography, quantitative structure-retention relationships (QSRRs) are applied to model the relation between chromatographic retention and quantities derived from molecular structure of analytes. Classically a substantial number of test analytes is used to build QSRR models. This makes their application laborious and time consuming. In this work a strategy is presented to build QSRR models based on selected reduced calibration sets. The analytes in the reduced calibration sets are selected from larger sets of analytes by applying the algorithm of Kennard and Stone on the molecular descriptors used in the QSRR concerned. The strategy was applied on three QSRR models of different complexity, relating log K_w or log k with either: (i) logP, the n-octanol-water partition coefficient, (ii) calculated quantum chemical indices (QCI), or (iii) descriptors from the linear solvation energy relationship (LSER). Models were developed and validated for 76 reversed-phase high-performance liquid chromatography systems.From the results we can conclude that it is possible to develop logP models suitable for the future prediction of retentions with as few as seven analytes. For the QCI and LSER models we derived the rule that three selected analytes per descriptor are sufficient. Both the dependent variable space, formed by the retention values, and the independent variable space, formed by the descriptors, are covered well by the reduced calibration sets. Finally guidelines to construct small calibration sets are formulated.
机译:在高效液相色谱中,定量结构保留关系(QSRR)用于模拟色谱保留与衍生自分析物分子结构的量之间的关系。传统上,大量测试分析物用于建立QSRR模型。这使得它们的应用费力且费时。在这项工作中,提出了一种基于选择的简化校准集构建QSRR模型的策略。通过在有关QSRR中使用的分子描述符上应用Kennard和Stone算法,可以从较大的分析物集中选择减少的校准物中的分析物。将该策略应用于三种不同复杂度的QSRR模型,将log K_w或log k与以下各项相关:(i)logP,正辛醇-水分配系数,(ii)计算的量子化学指​​数(QCI)或(iii)线性溶剂化能量关系(LSER)的描述子。针对76种反相高效液相色谱系统开发并验证了模型,从结果可以得出结论,有可能开发出适用于未来预测保留量低至7种分析物的logP模型。对于QCI和LSER模型,我们得出以下规则:每个描述符三个选择的分析物就足够了。由保留值形成的因变量空间和由描述符形成的自变量空间都被简化的校准集很好地覆盖。最后,制定了构建小型校准集的指南。

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