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首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Cross-column prediction of gas-chromatographic retention indices of saturated esters
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Cross-column prediction of gas-chromatographic retention indices of saturated esters

机译:饱和酯的气相色谱保留指数的跨柱预测

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We combine computational molecular descriptors and variables related with the gas-chromatographic stationary phase into a comprehensive model able to predict the retention of solutes in external columns. To explore the quality of various approaches based on alternative column descriptors, we analyse the Kováts retention indices (RIs) of 90 saturated esters collected with seven columns of different polarity (SE-30, OV-7, DC-710, OV-25, XE-60, OV-225 and Silar-5CP). Cross-column retention prediction is evaluated on an internal validation set consisting of data of 40 selected esters collected with each of the seven columns, sequentially excluded from calibration. The molecular descriptors are identified by a genetic algorithm variable selection method applied to a large set of non-empirical structural quantities aimed at finding the best multi-linear quantitative structure-retention relationship (QSRR) for the column OV-25 having intermediate polarity. To describe the columns, we consider the sum of the first five McReynolds phase constants and, alternatively, the coefficients of the corresponding QSRRs. Moreover, the mean RI value for the subset of esters used in QSRR calibration or RIs of a few selected compounds are used as column descriptors. For each combination of solute and column descriptors, the retention model is generated both by multi-linear regression and artificial neural network regression.
机译:我们将计算分子描述子和与气相色谱固定相相关的变量组合到一个能够预测外部柱中溶质保留率的综合模型中。为了探索基于替代色谱柱描述子的各种方法的质量,我们分析了用七种不同极性的色谱柱(SE-30,OV-7,DC-710,OV-25, XE-60,OV-225和Silar-5CP)。在内部验证集上评估跨柱保留预测,该内部验证集由与七个色谱柱中的每一个一起收集的40种所选酯的数据组成,依次从校准中排除。分子描述符通过遗传算法变量选择方法识别,该方法应用于大量非经验结构量,旨在为具有中间极性的OV-25色谱柱找到最佳的多线性定量结构-保留关系(QSRR)。为了描述这些列,我们考虑了前五个McReynolds相常数之和以及相应的QSRR的系数。此外,将QSRR校准中使用的酯子集的平均RI值或一些选定化合物的RI用作列描述符。对于溶质和色谱柱描述符的每种组合,保留模型都是通过多线性回归和人工神经网络回归生成的。

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