Pirok Bob W J, Molenaar Stef R A, van Outersterp Rianne E, Schoenmakers Peter J
University of Amsterdam, van 't Hoff Institute for Molecular Sciences, Analytical-Chemistry Group, Science Park 904, 1098 XH, Amsterdam, The Netherlands; TI-COAST, Science Park 904, 1098 XH, Amsterdam, The Netherlands.
University of Amsterdam, van 't Hoff Institute for Molecular Sciences, Analytical-Chemistry Group, Science Park 904, 1098 XH, Amsterdam, The Netherlands.
J Chromatogr A. 2017 Dec 29;1530:104-111. doi: 10.1016/j.chroma.2017.11.017. Epub 2017 Nov 11.
Computer-aided method-development programs require accurate models to describe retention and to make predictions based on a limited number of scouting gradients. The performance of five different retention models for hydrophilic-interaction chromatography (HILIC) is assessed for a wide range of analytes. Gradient-elution equations are presented for each model, using Simpson's Rule to approximate the integral in case no exact solution exists. For most compound classes the adsorption model, i.e. a linear relation between the logarithm of the retention factor and the logarithm of the composition, is found to provide the most robust performance. Prediction accuracies depended on analyte class, with peptide retention being predicted least accurately, and on the stationary phase, with better results for a diol column than for an amide column. The two-parameter adsorption model is also attractive, because it can be used with good results using only two scanning gradients. This model is recommended as the first-choice model for describing and predicting HILIC retention data, because of its accuracy and linearity. Other models (linear solvent-strength model, mixed-mode model) should only be considered after validating their applicability in specific cases.
计算机辅助方法开发程序需要精确的模型来描述保留情况,并基于有限数量的探索性梯度进行预测。针对多种分析物评估了亲水相互作用色谱法(HILIC)的五种不同保留模型的性能。为每个模型给出了梯度洗脱方程,在不存在精确解的情况下使用辛普森法则近似积分。对于大多数化合物类别,发现吸附模型,即保留因子的对数与组成的对数之间的线性关系,具有最强健的性能。预测准确性取决于分析物类别(肽的保留预测最不准确)和固定相(二醇柱的结果优于酰胺柱)。双参数吸附模型也很有吸引力,因为仅使用两个扫描梯度就能取得良好效果。由于其准确性和线性,该模型被推荐为描述和预测HILIC保留数据的首选模型。其他模型(线性溶剂强度模型、混合模式模型)仅在验证其在特定情况下的适用性后才应予以考虑。