Department of Chemistry, Northwestern University, Evanston, IL, USA.
Proteomics Center of Excellence, Northwestern University, Evanston, IL, USA.
Metabolomics. 2024 Aug 2;20(5):90. doi: 10.1007/s11306-024-02153-8.
Fungi biosynthesize chemically diverse secondary metabolites with a wide range of biological activities. Natural product scientists have increasingly turned towards bioinformatics approaches, combining metabolomics and genomics to target secondary metabolites and their biosynthetic machinery. We recently applied an integrated metabologenomics workflow to 110 fungi and identified more than 230 high-confidence linkages between metabolites and their biosynthetic pathways.
To prioritize the discovery of bioactive natural products and their biosynthetic pathways from these hundreds of high-confidence linkages, we developed a bioactivity-driven metabologenomics workflow combining quantitative chemical information, antiproliferative bioactivity data, and genome sequences.
The 110 fungi from our metabologenomics study were tested against multiple cancer cell lines to identify which strains produced antiproliferative natural products. Three strains were selected for further study, fractionated using flash chromatography, and subjected to an additional round of bioactivity testing and mass spectral analysis. Data were overlaid using biochemometrics analysis to predict active constituents early in the fractionation process following which their biosynthetic pathways were identified using metabologenomics.
We isolated three new-to-nature stemphone analogs, 19-acetylstemphones G (1), B (2) and E (3), that demonstrated antiproliferative activity ranging from 3 to 5 µM against human melanoma (MDA-MB-435) and ovarian cancer (OVACR3) cells. We proposed a rational biosynthetic pathway for these compounds, highlighting the potential of using bioactivity as a filter for the analysis of integrated-Omics datasets.
This work demonstrates how the incorporation of biochemometrics as a third dimension into the metabologenomics workflow can identify bioactive metabolites and link them to their biosynthetic machinery.
真菌生物合成具有广泛生物活性的化学多样的次生代谢物。天然产物科学家越来越多地转向生物信息学方法,将代谢组学和基因组学相结合,以靶向次生代谢物及其生物合成机制。我们最近应用了一种综合的代谢组学工作流程对 110 种真菌进行了研究,并确定了超过 230 种代谢物与其生物合成途径之间的高可信度关联。
为了优先从这些数百种高可信度的关联中发现生物活性天然产物及其生物合成途径,我们开发了一种基于生物活性的代谢组学工作流程,该流程结合了定量化学信息、抗增殖生物活性数据和基因组序列。
我们从代谢组学研究中选择的 110 种真菌被测试对多种癌细胞系的抗增殖活性,以确定哪些菌株产生了具有抗增殖活性的天然产物。选择了三个菌株进行进一步研究,使用快速色谱法进行分离,并进行了额外的一轮生物活性测试和质谱分析。数据通过生物化学计量学分析进行叠加,以在分离过程的早期预测活性成分,然后使用代谢组学确定其生物合成途径。
我们分离出了三种新型的 Stemphone 类似物,19-乙酰 Stemphone G(1)、B(2)和 E(3),它们对人类黑色素瘤(MDA-MB-435)和卵巢癌细胞(OVACR3)的增殖具有 3 至 5µM 的抗增殖活性。我们提出了这些化合物的合理生物合成途径,突出了将生物活性用作分析综合-Omics 数据集的过滤器的潜力。
这项工作表明,如何将生物化学计量学作为第三个维度纳入代谢组学工作流程,可以识别生物活性代谢物并将其与其生物合成机制联系起来。