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使用人工神经网络推进对超临界流体色谱中保留相互作用的基本理解:含-OH基团的极性固定相

Advancing Fundamental Understanding of Retention Interactions in Supercritical Fluid Chromatography Using Artificial Neural Networks: Polar Stationary Phases with -OH Moieties.

作者信息

Plachká Kateřina, Pilařová Veronika, Gazárková Tat'ána, Švec František, Garrigues Jean-Christophe, Nováková Lucie

机构信息

Department of Analytical Chemistry, Faculty of Pharmacy in Hradec Králové, Charles University, 500 05 Hradec Králové, Czechia.

SOFTMAT (IMRCP) Laboratory, SMODD Team, CNRS, Toulouse III Paul Sabatier University, 31400 Toulouse, France.

出版信息

Anal Chem. 2024 Aug 6;96(31):12748-12759. doi: 10.1021/acs.analchem.4c01811. Epub 2024 Jul 28.

Abstract

The retention behavior in supercritical fluid chromatography and its stability over time are still unsatisfactorily explained phenomena despite many important contributions in recent years, especially focusing on linear solvation energy relationship modeling. We studied polar stationary phases with predominant -OH functionalities, i.e., silica, hybrid silica, and diol columns, and their retention behavior over time. We correlated molecular descriptors of analytes with their retention using three organic modifiers of the CO-based mobile phase. The differences in retention behavior caused by using additives, namely, 10 mmol/L NH and 2% HO in methanol, were described in correlation to analyte properties and compared with the CO/methanol mobile phase. The structure of >100 molecules included in this study was optimized by semiempirical AM1 quantum mechanical calculations and subsequently described by 226 molecular descriptors including topological, constitutional, hybrid, electronic, and geometric descriptors. An artificial neural networks simulator with deep learning toolbox was trained on this extensive set of experimental data and subsequently used to determine key molecular descriptors affecting the retention by the highest extent. After comprehensive statistical analysis of the experimental data collected during one year of column use, the retention on different stationary phases was fundamentally described. The changes in the retention behavior during one year of column use were described and their explanation with a proposed interpretation of changes on the stationary phase surface was suggested. The effect of the regeneration procedure on the retention was also evaluated. This fundamental understanding of interactions responsible for retention in SFC can be used for the evidence-based selection of stationary phases suitable for the separation of particular analytes based on their specific physicochemical properties.

摘要

尽管近年来有许多重要贡献,特别是侧重于线性溶剂化能关系建模,但超临界流体色谱中的保留行为及其随时间的稳定性仍是尚未得到充分解释的现象。我们研究了具有主要-OH官能团的极性固定相,即硅胶、杂化硅胶和二醇柱,以及它们随时间的保留行为。我们使用基于CO的流动相的三种有机改性剂,将分析物的分子描述符与其保留情况进行关联。描述了使用添加剂(即甲醇中的10 mmol/L NH和2% HO)所引起的保留行为差异与分析物性质的相关性,并与CO/甲醇流动相进行了比较。本研究中包含的100多个分子的结构通过半经验AM1量子力学计算进行了优化,随后用226个分子描述符进行描述,这些描述符包括拓扑、组成、杂化、电子和几何描述符。使用深度学习工具箱的人工神经网络模拟器在这一广泛的实验数据集上进行训练,随后用于确定对保留影响程度最大的关键分子描述符。在对柱使用一年期间收集的实验数据进行全面统计分析后,从根本上描述了在不同固定相上的保留情况。描述了柱使用一年期间保留行为的变化,并建议用对固定相表面变化的一种解释来进行说明。还评估了再生程序对保留的影响。对超临界流体色谱中负责保留的相互作用的这种基本理解,可用于基于特定分析物的特定物理化学性质,循证选择适合分离这些分析物的固定相。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1bf/11307250/6ee02808bf4f/ac4c01811_0001.jpg

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