Triterpenoids are one of the main active ingredients in traditional Chinese medicine (TCM) and have attracted significant attention due to their anti-inflammatory, antibacterial and antioxidant properties. However, the structural complexity and low content of triterpenoids in TCM bring major challenges to the effective characterization of these compounds. Liquid chromatography-mass spectrometry (LC-MS) technology has greatly facilitated the qualitative analysis of triterpeneoids. Advances in computer technology and data analysis have significantly enhanced data processing tools, offering high efficiency and accuracy. This review summarizes the latest advances and trends in characterizing triterpenoids in TCM using LC-MS technology, with a systematic elaboration on related data acquisition, post-processing, and derivatization strategies aimed at addressing key challenges in mass spectrometry, such as low ionization efficiency and poor detection response. To further support efficient analysis, this review also outlines the fragmentation patterns of common triterpenoids to facilitate their rapid identification. Given the prevalence of isomerism in this compound class, three specialized identification methods are also evaluated: ion mobility spectroscopy (IMS), ion dissociation (ID), and energy-resolved mass spectrometry (ER-MS). Finally, challenges associated with analyzing triterpenoids in complex matrices are discussed, along with strategic approaches to address them. Overall, this review provides a structured framework to guide researchers in understanding and systematically optimizing LC-MS analytical strategies for triterpenoid compounds. • This review covers recent advances in LC-MS and its application to triterpenoid analysis. • It examines common data acquisition, post-processing, and derivatization strategies. • It presents a systematic analysis of common triterpenoid cleavage patterns. • It discusses the application of IMS, ID, and ER-MS in distinguishing triterpene isomers.
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Tiantian Wen
Sun Yat-sen University
Wei Guan
Heilongjiang University of Chinese Medicine
Yanying Li
Jinan University
Journal of Pharmaceutical Analysis
Northeast Agricultural University
Heilongjiang University of Chinese Medicine
Education Department of Heilongjiang Province
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Wen et al. (Wed,) studied this question.
synapsesocial.com/papers/69df2a4be4eeef8a2a6af7c0 — DOI: https://doi.org/10.1016/j.jpha.2026.101632