Chengdu Institute of Organic Chemistry, Chinese Academy of Sciences, Chengdu, P. R. China.
Chengdu Institute of Biology, Chinese Academy of Sciences, Chengdu, P. R. China.
Phytochem Anal. 2023 Jul;34(5):548-559. doi: 10.1002/pca.3235. Epub 2023 May 17.
Hypericum bellum Li is rich in xanthones with various bioactivities, especially in anti-breast cancer. While the scarcity of mass spectral data of xanthones in Global Natural Products Social Molecular Networking (GNPS) libraries have challenged the rapid recognition of xanthones with similar structures.
This study is aimed to enhance the molecular networking (MN)-based dereplication and visualisation ability of potential anti-breast cancer xanthones from H. bellum to overcome the scarcity of xanthones mass spectral data in GNPS libraries. Separating and purifying the MN-screening bioactive xanthones to verify the practicality and accuracy of this rapid recognition strategy.
A combined strategy of "seed" mass spectra-based MN, in silico annotation tools, substructure identification tools, reverse molecular docking, ADMET screening, molecular dynamics (MDs) simulation experiments, and an MN-oriented separation procedure was first introduced to facilitate the rapid recognition and targeted isolation of potential anti-breast cancer xanthones in H. bellum.
A total of 41 xanthones could only be tentatively identified. Among them, eight xanthones were screened to have potential anti-breast cancer activities, and six xanthones that were initially reported in H. bellum were obtained and verified to have good binding abilities with their paired targets.
This is a successful case study that validated the application of "seed" mass spectral data could overcome the drawbacks of GNPS libraries with limited mass spectra and enhance the accuracy and visualisation of natural products (NPs) dereplication, and this rapid recognition and targeted isolation strategy can be also applicable for other types of NPs.
指令:贯叶金丝桃(Hypericum bellum Li)富含具有多种生物活性的呫吨酮,尤其在抗乳腺癌方面。然而,全球天然产物社会分子网络(GNPS)库中呫吨酮的质谱数据稀缺,这对具有相似结构的呫吨酮的快速识别提出了挑战。
目的:本研究旨在提高基于分子网络(MN)的贯叶金丝桃中潜在抗乳腺癌呫吨酮的去重复和可视化能力,以克服 GNPS 库中呫吨酮质谱数据的稀缺。分离和纯化 MN 筛选的生物活性呫吨酮,以验证这种快速识别策略的实用性和准确性。
方法:首次引入了一种“种子”质谱的 MN 结合策略、计算机注释工具、子结构识别工具、反向分子对接、ADMET 筛选、分子动力学(MDs)模拟实验和 MN 导向的分离程序,以促进贯叶金丝桃中潜在抗乳腺癌呫吨酮的快速识别和靶向分离。
结果:总共可以暂定鉴定 41 种呫吨酮。其中,筛选出 8 种具有潜在抗乳腺癌活性的呫吨酮,并获得并验证了最初在贯叶金丝桃中报道的 6 种呫吨酮与它们配对的靶标具有良好的结合能力。
结论:这是一个成功的案例研究,验证了“种子”质谱数据的应用可以克服 GNPS 库中有限质谱数据的缺点,提高天然产物(NPs)去重复的准确性和可视化程度,并且这种快速识别和靶向分离策略也适用于其他类型的 NPs。