An automatic LC-MS/MS data analysis workflow for herbal compound annotation with AutoAnnotatoR: A case study of ten botanical origins of Fritillaria species

传统医学 化学 注释 生物 医学 生物信息学
作者
Yaling An,Jiayuan Li,Wenlong Wei,Yun Li,Jianqing Zhang,Changliang Yao,Qirui Bi,Shu Wang,Zhong-da Zeng,De‐an Guo
出处
期刊:Phytomedicine [Elsevier BV]
卷期号:135: 156193-156193 被引量:4
标识
DOI:10.1016/j.phymed.2024.156193
摘要

Background Despite the widespread implementation of analytical hardware capable of recording large-scale datasets for botanical natural products , the data processing procedures for compound annotation remain a bothersome obstacle that demand a tremendous amount of time and expert knowledge. Methods Herein, an automatic LC-MS/MS data analysis workflow with AutoAnnotatoR was introduced for the compound annotation of plant derived natural products , which has the merits of great efficiency, high accuracy, saving time and simplified process. This procedure enabled automatic matching of MS 2 data with characteristic fragment ions, as well as MS 1 data with compound libraries, which improves the accuracy of structural elucidation. Notably, the optimization of collision energy for each target ion was successfully performed for the first time, facilitating the acquisition of comprehensive fragmentation information. Results The automatic analysis workflow with AutoAnnotatoR was successfully applied for the annotation of alkaloids from 10 botanical origins of Fritillaria species. Consequently, a total of 2684 chemical constituents were tentatively characterized, with 23 components being unambiguously validated by reference standards and 2434 being probable novel chemicals. Conclusion The entire data analysis procedure takes only a few hours, vastly improving analysis speed while assuring high accuracy. This method provides a powerful tool for the rapid and precise annotation of complex natural products . The workflow is publicly accessible on Github as an open-source R package called AutoAnnotatoR ( https://github.com/anyaling2022/AutoAnnotatoR ).
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