化学
串联
色谱法
洗脱
分析物
选择性
串联质谱法
柱色谱法
亲水作用色谱法
高效液相色谱法
栏(排版)
梯度洗脱
反相色谱法
生物信息学
质谱法
计算机科学
有机化学
帧(网络)
复合材料
催化作用
基因
电信
材料科学
生物化学
作者
Imad A. Haidar Ahmad,Alaina Kiffer,Rodell C. Barrientos,Gioacchino Luca Losacco,Andrew Singh,Vladimir Shchurik,Heather Wang,Ian Mangion,Erik L. Regalado
标识
DOI:10.1021/acs.analchem.1c05551
摘要
Tandem column liquid chromatography (LC) is a convenient, cost-effective approach to resolve multicomponent mixtures by serially coupling columns on readily available one-dimensional separation systems without specialized user training. Yet, adoption of this technique remains limited, mainly due to the difficulty in identifying optimal selectivity out of many possible tandem column combinations. At this point, method development and optimization require laborious “hit-or-miss” experimentation and “blind” screening when investigating different column selectivity without standard analytes. As a result, many chromatography practitioners end up combining two columns of similar selectivity, limiting the scope and potential of tandem column LC as a mainstay for industrial applications. To circumvent this challenge, we herein introduce a straightforward in silico multifactorial approach as a framework to expediently map the separation landscape across multiple tandem columns (achiral and chiral) and eluent combinations (isocratic and gradient elution) under reversed-phase LC conditions. Retention models were built using commercially available LC simulator software showcasing less than 2% difference between experimental and simulated retention times for analytes of interest in multicomponent pharmaceutical mixtures (e.g., metabolites and cyclic peptides).
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