Fasoula S, Zisi Ch, Gika H, Pappa-Louisi A, Nikitas P
Department of Chemistry, Aristotle University of Thessaloniki, 54124, Greece.
Department of Chemical Engineering, Aristotle University of Thessaloniki, 54124, Greece.
J Chromatogr A. 2015 May 22;1395:109-15. doi: 10.1016/j.chroma.2015.03.068. Epub 2015 Apr 2.
A package of Excel VBA macros have been developed for modeling multilinear gradient retention data obtained in single or double gradient elution mode by changing organic modifier(s) content and/or eluent pH. For this purpose, ten chromatographic models were used and four methods were adopted for their application. The methods were based on (a) the analytical expression of the retention time, provided that this expression is available, (b) the retention times estimated using the Nikitas-Pappa approach, (c) the stepwise approximation, and (d) a simple numerical approximation involving the trapezoid rule for integration of the fundamental equation for gradient elution. For all these methods, Excel VBA macros have been written and implemented using two different platforms; the fitting and the optimization platform. The fitting platform calculates not only the adjustable parameters of the chromatographic models, but also the significance of these parameters and furthermore predicts the analyte elution times. The optimization platform determines the gradient conditions that lead to the optimum separation of a mixture of analytes by using the Solver evolutionary mode, provided that proper constraints are set in order to obtain the optimum gradient profile in the minimum gradient time. The performance of the two platforms was tested using experimental and artificial data. It was found that using the proposed spreadsheets, fitting, prediction, and optimization can be performed easily and effectively under all conditions. Overall, the best performance is exhibited by the analytical and Nikitas-Pappa's methods, although the former cannot be used under all circumstances.
已开发了一组Excel VBA宏,用于对通过改变有机改性剂含量和/或洗脱液pH值在单梯度或双梯度洗脱模式下获得的多线性梯度保留数据进行建模。为此,使用了十种色谱模型,并采用了四种方法来应用这些模型。这些方法基于:(a)保留时间的解析表达式(前提是该表达式可用);(b)使用Nikitas-Pappa方法估算的保留时间;(c)逐步逼近法;(d)一种简单的数值逼近法,涉及用于积分梯度洗脱基本方程的梯形法则。对于所有这些方法,已使用两个不同平台编写并实现了Excel VBA宏;拟合平台和优化平台。拟合平台不仅计算色谱模型的可调参数,还计算这些参数的显著性,并进一步预测分析物的洗脱时间。优化平台通过使用Solver进化模式确定导致分析物混合物最佳分离的梯度条件,前提是设置了适当的约束条件,以便在最短梯度时间内获得最佳梯度曲线。使用实验数据和人工数据对这两个平台的性能进行了测试。结果发现,使用所提出的电子表格,可以在所有条件下轻松有效地进行拟合、预测和优化。总体而言,分析方法和Nikitas-Pappa方法表现出最佳性能,尽管前者并非在所有情况下都能使用。