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基于代谢组学对五种鼠尾草属(唇形科)植物进行非靶向数据分析流程的剖析。

Metabolomics-based profiling of five Salvia L. (Lamiaceae) species using untargeted data analysis workflow.

作者信息

Kharazian Navaz, Dehkordi Farzaneh Jafari, Xiang Chun-Lei

机构信息

Department of Botany, Central Laboratory, Faculty of Sciences, Shahrekord University, Shahrekord, Iran.

Department of Biotechnology, Faculty of New Technologies, Shahrekord University of Medical Sciences, Shahrekord, Iran.

出版信息

Phytochem Anal. 2025 Jan;36(1):113-143. doi: 10.1002/pca.3423. Epub 2024 Jul 14.

Abstract

INTRODUCTION

The genus Salvia L., a member of the family Lamiaceae, is a keystone genus with a wide range of medicinal properties. It possesses a rich metabolite source that has long been used to treat different disorders.

OBJECTIVES

Due to a deficiency of untargeted metabolomic profiling in the genus Salvia, this work attempts to investigate a comprehensive mass spectral library matching, computational data annotations, exclusive biomarkers, specific chemotypes, intraspecific metabolite profile variation, and metabolite enrichment by a case study of five medicinal species of Salvia.

MATERIAL AND METHODS

Aerial parts of each species were subjected to QTRAP liquid chromatography-tandem mass spectrometry (LC-MS/MS) analysis workflow based on untargeted metabolites. A comprehensive and multivariate analysis was acquired on the metabolite dataset utilizing MetaboAnalyst 6.0 and the Global Natural Products Social Molecular Networking (GNPS) Web Platform.

RESULTS

The untargeted approach empowered the identification of 117 metabolites by library matching and 92 nodes annotated by automated matching. A machine learning algorithm as substructural topic modeling, MS2LDA, was further implemented to explore the metabolite substructures, resulting in four Mass2Motifs. The automated library newly discovered a total of 23 metabolites. In addition, 87 verified biomarkers of library matching, 58 biomarkers of GNPS annotations, and 11 specific chemotypes were screened.

CONCLUSION

Integrative spectral library matching and automated annotation by the GNPS platform provide comprehensive metabolite profiling through a workflow. In addition, QTRAP LC-MS/MS with multivariate analysis unveiled reliable information about inter and intraspecific levels of differentiation. The rigorous investigation of metabolite profiling presents a large-scale overview and new insights for chemotaxonomy and pharmaceutical studies.

摘要

引言

鼠尾草属(Salvia L.)是唇形科的一个成员,是一个具有广泛药用特性的关键属。它拥有丰富的代谢物来源,长期以来一直被用于治疗各种疾病。

目的

由于鼠尾草属缺乏非靶向代谢组学分析,本研究试图通过对五种药用鼠尾草进行案例研究,来探究全面的质谱库匹配、计算数据注释、独特的生物标志物、特定的化学型、种内代谢物谱变异以及代谢物富集情况。

材料与方法

对每个物种的地上部分进行基于非靶向代谢物的QTRAP液相色谱 - 串联质谱(LC-MS/MS)分析流程。利用MetaboAnalyst 6.0和全球天然产物社会分子网络(GNPS)网络平台对代谢物数据集进行全面的多变量分析。

结果

非靶向方法通过库匹配鉴定出117种代谢物,通过自动匹配注释了92个节点。进一步实施了一种机器学习算法——子结构主题建模(MS2LDA)来探索代谢物子结构,得到了四个质谱基序(Mass2Motifs)。自动库新发现了总共23种代谢物。此外,筛选出了87个经库匹配验证的生物标志物、58个GNPS注释的生物标志物以及11种特定的化学型。

结论

通过GNPS平台进行的综合光谱库匹配和自动注释通过一个工作流程提供了全面的代谢物谱。此外,结合多变量分析的QTRAP LC-MS/MS揭示了种间和种内分化水平的可靠信息。对代谢物谱的严格研究为化学分类学和药物研究提供了大规模的概述和新的见解。

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