Kurita Kenji L, Glassey Emerson, Linington Roger G
Department of Chemistry and Biochemistry, University of California, Santa Cruz, CA 95064.
Department of Chemistry and Biochemistry, University of California, Santa Cruz, CA 95064
Proc Natl Acad Sci U S A. 2015 Sep 29;112(39):11999-2004. doi: 10.1073/pnas.1507743112. Epub 2015 Sep 14.
Traditional natural products discovery using a combination of live/dead screening followed by iterative bioassay-guided fractionation affords no information about compound structure or mode of action until late in the discovery process. This leads to high rates of rediscovery and low probabilities of finding compounds with unique biological and/or chemical properties. By integrating image-based phenotypic screening in HeLa cells with high-resolution untargeted metabolomics analysis, we have developed a new platform, termed Compound Activity Mapping, that is capable of directly predicting the identities and modes of action of bioactive constituents for any complex natural product extract library. This new tool can be used to rapidly identify novel bioactive constituents and provide predictions of compound modes of action directly from primary screening data. This approach inverts the natural products discovery process from the existing "grind and find" model to a targeted, hypothesis-driven discovery model where the chemical features and biological function of bioactive metabolites are known early in the screening workflow, and lead compounds can be rationally selected based on biological and/or chemical novelty. We demonstrate the utility of the Compound Activity Mapping platform by combining 10,977 mass spectral features and 58,032 biological measurements from a library of 234 natural products extracts and integrating these two datasets to identify 13 clusters of fractions containing 11 known compound families and four new compounds. Using Compound Activity Mapping we discovered the quinocinnolinomycins, a new family of natural products with a unique carbon skeleton that cause endoplasmic reticulum stress.
传统的天然产物发现方法是结合活/死筛选,然后进行迭代的生物测定导向分级分离,直到发现过程后期才会获得有关化合物结构或作用方式的信息。这导致重复发现率很高,而找到具有独特生物学和/或化学性质的化合物的概率很低。通过将基于图像的HeLa细胞表型筛选与高分辨率非靶向代谢组学分析相结合,我们开发了一个新平台,称为化合物活性图谱,它能够直接预测任何复杂天然产物提取物库中生物活性成分的身份和作用方式。这个新工具可用于快速识别新型生物活性成分,并直接从初级筛选数据中提供化合物作用方式的预测。这种方法将天然产物发现过程从现有的“研磨并寻找”模型转变为一种有针对性的、假设驱动的发现模型,在该模型中,生物活性代谢物的化学特征和生物学功能在筛选工作流程的早期就已知,并且可以根据生物学和/或化学新颖性合理选择先导化合物。我们通过结合来自234种天然产物提取物库的10977个质谱特征和58032个生物学测量数据,并整合这两个数据集以识别包含11个已知化合物家族和4种新化合物的13个馏分簇,证明了化合物活性图谱平台的实用性。使用化合物活性图谱,我们发现了喹诺西诺霉素,这是一类具有独特碳骨架的新天然产物家族,可引起内质网应激。