药物发现
计算生物学
生成语法
蛋白酶抑制剂(药理学)
生成模型
序列(生物学)
推论
小分子
计算机科学
生物
人工智能
生物信息学
病毒
病毒学
生物化学
病毒载量
抗逆转录病毒疗法
作者
Vijil Chenthamarakshan,Samuel C. Hoffman,C.D. Owen,P. Lukacik,Claire Strain-Damerell,D. Fearon,Tika R. Malla,Anthony Tumber,Christopher J. Schofield,Duyvesteyn Hme.,Wanwisa Dejnirattisai,L. Carrique,Thomas S. Walter,Gavin Screaton,Tetiana Matviiuk,Aleksandra Mojsilovic,Jason Crain,Walsh,David I. Stuart,Payel Das
出处
期刊:Science Advances
[American Association for the Advancement of Science]
日期:2023-06-23
卷期号:9 (25)
标识
DOI:10.1126/sciadv.adg7865
摘要
Inhibitor discovery for emerging drug-target proteins is challenging, especially when target structure or active molecules are unknown. Here, we experimentally validate the broad utility of a deep generative framework trained at-scale on protein sequences, small molecules, and their mutual interactions—unbiased toward any specific target. We performed a protein sequence-conditioned sampling on the generative foundation model to design small-molecule inhibitors for two dissimilar targets: the spike protein receptor-binding domain (RBD) and the main protease from SARS-CoV-2. Despite using only the target sequence information during the model inference, micromolar-level inhibition was observed in vitro for two candidates out of four synthesized for each target. The most potent spike RBD inhibitor exhibited activity against several variants in live virus neutralization assays. These results establish that a single, broadly deployable generative foundation model for accelerated inhibitor discovery is effective and efficient, even in the absence of target structure or binder information.
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