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In Silico Screening of Two-Dimensional Separation Selectivity for Ion Chromatography x Capillary Electrophoresis Separation of Low-Molecular-Mass Organic Acids

机译:在离子色谱X离子色谱X毛细管电泳分离的二维分离选择性的二维分离选择性中的硅筛选

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摘要

A prerequisite for ordered two-dimensional (2D) separations and full utilization of the enhanced 2D peak capacity is selective exploitation of the sample attributes, described as sample dimensionality. In order to take sample dimensionality into account prior to optimization of a 2D separation, a new concept based on construction of 2D separation selectivity maps is proposed and demonstrated for ion chromatography x capillary electrophoresis (ICxCE) separation of low-molecular-mass organic acids as test analytes. For this purpose, 1D separation selectivity maps were constructed based on calculation of pairwise separation factors and identification of critical pairs for four IC stationary phases and 28 levels of background electrolyte pH in CE. The derived IC and CE maps were then superimposed and the effectiveness of the respective 2D separations assessed using an in silico approach, followed by testing examples of one successful and one unsuccessful 2D combination experimentally. The results confirmed the efficacy of the predictions, which require a minimal number of experiments compared-to the traditional one-at-a-time approach. Following the same principles, the proposed framework can also be adapted for optimization of separation selectivity in various 2D combinations and for other applications.
机译:有序二维(2D)分离的先决条件和增强型2D峰值容量的完全利用是选择性利用样本属性,描述为样本维度。为了在优化2D分离之前考虑到样本维度,提出了一种基于2D分离选择性图建造的新概念,并对离子色谱X毛细管电泳(ICXCE)分离的低分子量有机酸为测试分析物。为此目的,基于计算成对分离因子和四个IC固定阶段的临界对的鉴定和CE中的28个背景电解质pH识别的1D分离选择性图。然后叠加衍生的IC和CE图,并使用硅方法评估各个2D分离的有效性,然后通过实验测试一个成功和一个不成功的2D组合的示例。结果证实了预测的功效,这需要最少数量的实验 - 与传统的一次性方法相比。在相同的原理之后,所提出的框架还可以适用于优化各种2D组合和其他应用中的分离选择性。

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  • 来源
    《Analytical chemistry》 |2017年第17期|共8页
  • 作者单位

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Phys Sci Australian Ctr Res Separat Sci Private Bag 75 Hobart Tas 7001 Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
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