人参皂苷多维信息库(GinMIL)的应用,可以准确表征不同人参产品中的人参皂苷,加速新皂苷化合物的发现

IF 6.2 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY
Hongda Wang, Huizhen Cheng, Min Zhang, Yadan Zou, Ruohan Wen, Kefeng Li, Duo Wang, Mengxiang Ding, Qinhua Chen, Qi-long Wang, Xiu-mei Gao* and Wenzhi Yang*, 
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引用次数: 0

摘要

由于缺乏足够的结构信息,依靠液相色谱-质谱(LC-MS)准确表征人参皂苷具有挑战性。通过机器学习技术,我们建立了人参皂苷多维信息库GinMIL,涵盖了579种人参皂苷的四个维度的结构信息。本研究旨在通过离子迁移率LC/MS分析和UNIFI上的高效GinMIL匹配,准确表征三七产品中的人参皂苷,并快速发现西洋参花中的新型人参皂苷。因此,我们分别从三七的3个组分/ 2个提取物/ 4个单一制剂/7个复方制剂中鉴定了334/356/738/545种人参皂苷。在4类三七产品中分别发现45/99/59/116个新团块。通过GinMIL分析,从西洋参花中分离到4种新的人参皂苷,包括3种罕见的二丙二醇基人参皂苷和1种甲基化的丙二醇基人参皂苷。这项工作可以验证GinMIL的优越性,从而大大提高了功能性草药的多组分表征和新化合物的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Application of the Ginsenoside Multidimensional Information Library (GinMIL) Enables Accurate Characterization of Ginsenosides from Diverse Ginseng Products and Accelerates the Discovery of New Saponin Compounds

Application of the Ginsenoside Multidimensional Information Library (GinMIL) Enables Accurate Characterization of Ginsenosides from Diverse Ginseng Products and Accelerates the Discovery of New Saponin Compounds

Accurate characterization of ginsenosides from ginseng relying on liquid chromatography-mass spectrometry (LC-MS) is challenging due to the lack of sufficient structural information. By machine learning techniques, we have established a ginsenoside multidimensional information library, namely, GinMIL, covering four dimensions of structural information of 579 ginsenosides. This work was designed to accurately characterize ginsenosides from Panax notoginseng products and to rapidly discover novel ginsenosides from Panax quinquefolius flowers by ion-mobility LC/MS profiling and efficient GinMIL matching on UNIFI. Consequently, we characterized 334/356/738/545 ginsenosides from three parts/two extracts/four single preparations/seven compound preparations of Panax notoginseng, respectively. 45/99/59/116 novel masses were discovered in four types of notoginseng products, respectively. Four novel ginsenosides, including three rare dimalonyl ginsenosides and one methylated malonyl ginsenoside, were isolated from Panax quinquefolius flowers by feat of GinMIL analysis. This work can verify the superiority of GinMIL, thus greatly enhancing the multicomponent characterization and the discovery of new compounds from functional herbs.

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来源期刊
Journal of Agricultural and Food Chemistry
Journal of Agricultural and Food Chemistry 农林科学-农业综合
CiteScore
9.90
自引率
8.20%
发文量
1375
审稿时长
2.3 months
期刊介绍: The Journal of Agricultural and Food Chemistry publishes high-quality, cutting edge original research representing complete studies and research advances dealing with the chemistry and biochemistry of agriculture and food. The Journal also encourages papers with chemistry and/or biochemistry as a major component combined with biological/sensory/nutritional/toxicological evaluation related to agriculture and/or food.
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