药品
药物重新定位
药物发现
2019年冠状病毒病(COVID-19)
抗病毒药物
计算机科学
严重急性呼吸综合征冠状病毒2型(SARS-CoV-2)
药物相互作用
计算生物学
药物开发
机器学习
药理学
人工智能
医学
疾病
生物信息学
传染病(医学专业)
生物
病理
作者
Wengong Jin,Jonathan Stokes,Richard T. Eastman,Zina Itkin,Alexey Zakharov,James J. Collins,Tommi Jaakkola,Regina Barzilay
标识
DOI:10.1073/pnas.2105070118
摘要
Effective treatments for COVID-19 are urgently needed. However, discovering single-agent therapies with activity against severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has been challenging. Combination therapies play an important role in antiviral therapies, due to their improved efficacy and reduced toxicity. Recent approaches have applied deep learning to identify synergistic drug combinations for diseases with vast preexisting datasets, but these are not applicable to new diseases with limited combination data, such as COVID-19. Given that drug synergy often occurs through inhibition of discrete biological targets, here we propose a neural network architecture that jointly learns drug-target interaction and drug-drug synergy. The model consists of two parts: a drug-target interaction module and a target-disease association module. This design enables the model to utilize drug-target interaction data and single-agent antiviral activity data, in addition to available drug-drug combination datasets, which may be small in nature. By incorporating additional biological information, our model performs significantly better in synergy prediction accuracy than previous methods with limited drug combination training data. We empirically validated our model predictions and discovered two drug combinations, remdesivir and reserpine as well as remdesivir and IQ-1S, which display strong antiviral SARS-CoV-2 synergy in vitro. Our approach, which was applied here to address the urgent threat of COVID-19, can be readily extended to other diseases for which a dearth of chemical-chemical combination data exists.
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