Institute of Molecular Systems Biology, ETH Zurich, Zurich, Switzerland.
Mol Syst Biol. 2022 Feb;18(2):e10767. doi: 10.15252/msb.202110767.
Chemical probes are important tools for understanding biological systems. However, because of the huge combinatorial space of targets and potential compounds, traditional chemical screens cannot be applied systematically to find probes for all possible druggable targets. Here, we demonstrate a novel concept for overcoming this challenge by leveraging high-throughput metabolomics and overexpression to predict drug-target interactions. The metabolome profiles of yeast treated with 1,280 compounds from a chemical library were collected and compared with those of inducible yeast membrane protein overexpression strains. By matching metabolome profiles, we predicted which small molecules targeted which signaling systems and recovered known interactions. Drug-target predictions were generated across the 86 genes studied, including for difficult to study membrane proteins. A subset of those predictions were tested and validated, including the novel targeting of GPR1 signaling by ibuprofen. These results demonstrate the feasibility of predicting drug-target relationships for eukaryotic proteins using high-throughput metabolomics.
化学探针是理解生物系统的重要工具。然而,由于靶点和潜在化合物的组合空间巨大,传统的化学筛选不能系统地应用于寻找针对所有可能成药靶点的探针。在这里,我们展示了一种通过利用高通量代谢组学和过表达来预测药物-靶标相互作用来克服这一挑战的新概念。用来自化学文库的 1280 种化合物处理酵母后,收集并比较了酵母代谢组的图谱与可诱导的酵母膜蛋白过表达菌株的代谢组图谱。通过匹配代谢组图谱,我们预测了哪些小分子靶向哪些信号系统,并恢复了已知的相互作用。对研究的 86 个基因进行了药物-靶标预测,包括难以研究的膜蛋白。对其中的一部分预测进行了测试和验证,包括布洛芬对 GPR1 信号的新靶向作用。这些结果表明,使用高通量代谢组学预测真核蛋白的药物-靶标关系是可行的。