PI3K/AKT/mTOR通路
计算生物学
小分子
虚拟筛选
药物发现
生成模型
化学
化学图书馆
蛋白激酶B
计算机科学
化学
组合化学
磷酸化
生成语法
生物化学
生物
信号转导
人工智能
作者
Michael Moret,Irène Pachón-Angona,Leandro Cotos,Shen Yan,Kenneth Atz,C Brunner,Martin Baumgärtner,Francesca Grisoni,Gisbert Schneider
标识
DOI:10.1038/s41467-022-35692-6
摘要
Generative chemical language models (CLMs) can be used for de novo molecular structure generation by learning from a textual representation of molecules. Here, we show that hybrid CLMs can additionally leverage the bioactivity information available for the training compounds. To computationally design ligands of phosphoinositide 3-kinase gamma (PI3Kγ), a collection of virtual molecules was created with a generative CLM. This virtual compound library was refined using a CLM-based classifier for bioactivity prediction. This second hybrid CLM was pretrained with patented molecular structures and fine-tuned with known PI3Kγ ligands. Several of the computer-generated molecular designs were commercially available, enabling fast prescreening and preliminary experimental validation. A new PI3Kγ ligand with sub-micromolar activity was identified, highlighting the method's scaffold-hopping potential. Chemical synthesis and biochemical testing of two of the top-ranked de novo designed molecules and their derivatives corroborated the model's ability to generate PI3Kγ ligands with medium to low nanomolar activity for hit-to-lead expansion. The most potent compounds led to pronounced inhibition of PI3K-dependent Akt phosphorylation in a medulloblastoma cell model, demonstrating efficacy of PI3Kγ ligands in PI3K/Akt pathway repression in human tumor cells. The results positively advocate hybrid CLMs for virtual compound screening and activity-focused molecular design.
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