Department of Chemistry and Applied Biosciences, ETH Zurich, Vladimir-Prelog-Weg 4, 8093, Zurich, Switzerland.
inSili.com GmbH, Segantinisteig 3, 8049, Zurich, Switzerland.
Mol Inform. 2020 Sep;39(9):e2000109. doi: 10.1002/minf.202000109. Epub 2020 Jul 9.
Ligand-based virtual screening of large compound collections, combined with fast bioactivity determination, facilitate the discovery of bioactive molecules with desired properties. Here, chemical similarity based machine learning and label-free differential scanning fluorimetry were used to rapidly identify new ligands of the anticancer target Pim-1 kinase. The three-dimensional crystal structure complex of human Pim-1 with ligand bound revealed an ATP-competitive binding mode. Generative de novo design with a recurrent neural network additionally suggested innovative molecular scaffolds. Results corroborate the validity of the chemical similarity principle for rapid ligand prototyping, suggesting the complementarity of similarity-based and generative computational approaches.
基于配体的虚拟筛选大型化合物库,结合快速的生物活性测定,有助于发现具有理想性质的生物活性分子。在这里,基于化学相似性的机器学习和无标记差示扫描荧光法被用于快速鉴定抗癌靶标 Pim-1 激酶的新配体。与配体结合的人 Pim-1 的三维晶体结构复合物揭示了一种 ATP 竞争性结合模式。具有递归神经网络的生成式从头设计另外提出了创新的分子支架。结果证实了化学相似性原则在快速配体原型设计中的有效性,表明基于相似性和生成式计算方法的互补性。