化学
色谱法
糖苷
红景天
红景天
定量分析(化学)
代谢组学
没食子酸
代谢组
代谢物
植物化学
红景天苷
有机化学
抗氧化剂
生物化学
作者
Yu Tang,J. Brent Friesen,Dejan Nikolić,David C. Lankin,James B. McAlpine,Shao Nong Chen,Guido F. Pauli
标识
DOI:10.1021/acs.analchem.1c01554
摘要
Off-line combination of countercurrent separation (CCS) and quantitative 1H NMR (qHNMR) methodologies enabled the systematic dissection and gravimetric quantification of a chemically complex Rhodiola rosea crude extract (RCE). The loss-free nature and high selectivity of CCS achieved the quantitative discrimination of fatty acids (FAs), sugars, and proanthocyanidins (PACs) from ten other metabolite classes: phenylpropanoids, phenylethanoids, acyclic monoterpenoid glycosides, pinene derived glycosides, benzyl alcohol glycosides, cyanogenic glycosides, flavonoids, gallic acids, methylparabens, and cuminol glycosides. The ability of CCS to remove ("knockout") PACs completely resolved challenges with baselines that plague NMR and UHPLC analyses and produce inaccurate integral and AUC quantitation, respectively. NMR analysis of the non-PAC fractions enabled unambiguous identification of metabolites and their characteristic resonances for subsequent multitarget absolute quantification by qHNMR using a single, nonidentical internal calibrant (IC). An orthogonal LC-MS/MS method validated the gravimetric nature of the CCS-qHNMR analytical tandem. Underlying this LC-based cross-validation, comprehensive phytochemical isolation and characterization established 19 single-compound reference standards that represented all ten metabolite classes. Finally, quantum mechanical 1H iterative Full Spin Analysis (HiFSA) of each standard provided a blueprint for future structural dereplication, identification, and quantification of Rhodiola marker constituents. The combination of two gravimetric analytical methods, loss-free CCS and IC-qHNMR, realizes the first chemical standardization of a botanical material that comprehensively captures a metabolome and permits absolute quantification.
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