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Quantitative Structure–Retention Relationships with Non-Linear Programming for Prediction of Chromatographic Elution Order

机译:非线性规划的定量结构-保留关系预测色谱洗脱顺序

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摘要

In this work, we employed a non-linear programming (NLP) approach via quantitative structure–retention relationships (QSRRs) modelling for prediction of elution order in reversed phase-liquid chromatography. With our rapid and efficient approach, error in prediction of retention time is sacrificed in favor of decreasing the error in elution order. Two case studies were evaluated: (i) analysis of 62 organic molecules on the Supelcosil LC-18 column; and (ii) analysis of 98 synthetic peptides on seven reversed phase-liquid chromatography (RP-LC) columns with varied gradients and column temperatures. On average across all the columns, all the chromatographic conditions and all the case studies, percentage root mean square error (%RMSE) of retention time exhibited a relative increase of 29.13%, while the %RMSE of elution order a relative decrease of 37.29%. Therefore, sacrificing %RMSE(tR) led to a considerable increase in the elution order predictive ability of the QSRR models across all the case studies. Results of our preliminary study show that the real value of the developed NLP-based method lies in its ability to easily obtain better-performing QSRR models that can accurately predict both retention time and elution order, even for complex mixtures, such as proteomics and metabolomics mixtures.
机译:在这项工作中,我们通过定量结构-保留关系(QSRRs)模型采用了非线性规划(NLP)方法来预测反相液相色谱中的洗脱顺序。通过我们快速有效的方法,牺牲了保留时间的预测误差,有利于减少洗脱顺序的误差。评价了两个案例研究:(i)在Supelcosil LC-18色谱柱上分析62种有机分子; (ii)在七个具有不同梯度和柱温的反相液相色谱(RP-LC)色谱柱上分析98种合成肽。在所有色谱柱,所有色谱条件和所有案例研究中,平均保留时间的均方根误差百分比(%RMSE)相对增加了29.13%,而洗脱顺序的%RMSE相对减少了37.29% 。因此,在所有案例研究中,牺牲%RMSE(tR)会导致QSRR模型的洗脱顺序预测能力显着提高。我们的初步研究结果表明,开发的基于NLP的方法的真正价值在于它能够轻松获得性能更佳的QSRR模型,即使对于蛋白质组学和代谢组学等复杂混合物,该模型也能准确预测保留时间和洗脱顺序混合物。

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