结合LC-MS/MS和分子网络技术进行高级分析和总黄酮注释

IF 2.8 3区 工程技术 Q2 CHEMISTRY, ANALYTICAL
Priscillia Ann David, Anis Irfan Norazhar, Mohamad Shazeli Che Zain
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引用次数: 0

摘要

黄酮类化合物是酚类化合物的一个亚类,具有多种治疗特性,包括抗氧化、抗炎和伤口愈合特性。黄酮类化合物的这些促进健康的作用很大程度上依赖于其结构多样性的变化,这通常被认为是复杂的代谢组学数据集。在所使用的检测技术中,最先进的高分辨率液相色谱联用串联质谱(LC-MS/MS)已成为分析各种植物组织提取物中黄酮类化合物的流行分析方法。尽管黄酮类化合物具有广泛的适用性,但由于产生的碎片数据的数量和复杂性,使得黄酮类化合物的综合鉴定仍然是一个关键挑战。作为代谢组学的一个分支,分子网络(MN)是一种基于MS/MS数据的计算方法,已经成为一种革命性的技术,用于鉴定和表征许多类黄酮分子家族。通过可视化类黄酮指纹图谱的光谱相似性,MN实现了快速反复制,有效地辅助已知化学支架对未知特征的注释,并在分辨结构不同的类黄酮异构体方面表现出很高的精度。经典分子网络(CLMN)、基于特征的分子网络(FBMN)和基于子结构的分子网络(MS2LDA)等多种分子网络工具简化了识别过程,提高了对黄酮类化合物生物合成的认识。本文综述了基于质谱的黄酮类化合物表征策略的最新进展,首先概述了LC-MS/MS的应用及其在典型重复工作流程中的局限性,然后详细介绍了质谱技术的一般原理、工作流程及其在黄酮类化合物研究中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating LC-MS/MS and Molecular Networking for Advance Analysis and Comprehensive Flavonoids Annotation

Flavonoids, a subclass of phenolic compounds, exhibit diverse therapeutic properties, including antioxidant, anti-inflammatory, and wound healing properties. These health-promoting effects of flavonoids are greatly dependent on the variation in their structural diversity, which are generally perceived as complex metabolomic datasets. Among detection techniques used, state-of-the-art high-resolution liquid chromatography hyphenated with tandem mass spectrometry (LC-MS/MS) has become a popular analytical method of choice for the analysis of flavonoids from various plant tissue extracts. Despite its broad applicability, the vast amount and complexity of fragmentation data produced have made the comprehensive identification of flavonoids remains a key challenge. An offshoot of metabolomics, currently, molecular networking (MN), a computational approach based on MS/MS data, has emerged as a revolutionary technique for identifying and characterizing numerous flavonoid molecular families. By visualizing the spectral similarities of flavonoid fingerprints, MN enables rapid dereplication, efficient in assisting annotation of unknown features with known chemical scaffolds, and demonstrates high precision in resolving structurally diverse flavonoid isomers. Various MN tools, i.e., classical molecular networking (CLMN), feature-based molecular networking (FBMN), and substructure-based MN (MS2LDA), streamline the identification process and improve the understanding of flavonoids biosynthesis. This review aimed to describe the recent advancement in MS-based strategy for flavonoids characterization, starting with an overview on the application of LC-MS/MS and its limitation in the typical dereplication workflow, followed by specific sections on MN techniques, highlighting the aspects of general principles, workflow, and its application in flavonoid research.

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来源期刊
Journal of separation science
Journal of separation science 化学-分析化学
CiteScore
6.30
自引率
16.10%
发文量
408
审稿时长
1.8 months
期刊介绍: The Journal of Separation Science (JSS) is the most comprehensive source in separation science, since it covers all areas of chromatographic and electrophoretic separation methods in theory and practice, both in the analytical and in the preparative mode, solid phase extraction, sample preparation, and related techniques. Manuscripts on methodological or instrumental developments, including detection aspects, in particular mass spectrometry, as well as on innovative applications will also be published. Manuscripts on hyphenation, automation, and miniaturization are particularly welcome. Pre- and post-separation facets of a total analysis may be covered as well as the underlying logic of the development or application of a method.
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