The race to meet the challenges of the global pandemic has served as a reminder that the existing drug discovery process is expensive, inefficient and slow. There is a major bottleneck screening the vast number of potential small molecules to shortlist lead compounds for antiviral drug development. New opportunities to accelerate drug discovery lie at the interface between machine learning methods, in this case, developed for linear accelerators, and physics-based methods. The two in silico methods, each have their own advantages and limitations which, interestingly, complement each other. Here, we present an innovative infrastructural development that combines both approaches to accelerate drug discovery. The scale of the potential resulting workflow is such that it is dependent on supercomputing to achieve extremely high throughput. We have demonstrated the viability of this workflow for the study of inhibitors for four COVID-19 target proteins and our ability to perform the required large-scale calculations to identify lead antiviral compounds through repurposing on a variety of supercomputers.
Pandemic drugs at pandemic speed: infrastructure for accelerating COVID-19 drug discovery with hybrid machine learning- and physics-based simulations on high-performance computers.
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作者:Bhati Agastya P, Wan Shunzhou, Alfè Dario, Clyde Austin R, Bode Mathis, Tan Li, Titov Mikhail, Merzky Andre, Turilli Matteo, Jha Shantenu, Highfield Roger R, Rocchia Walter, Scafuri Nicola, Succi Sauro, Kranzlmüller Dieter, Mathias Gerald, Wifling David, Donon Yann, Di Meglio Alberto, Vallecorsa Sofia, Ma Heng, Trifan Anda, Ramanathan Arvind, Brettin Tom, Partin Alexander, Xia Fangfang, Duan Xiaotan, Stevens Rick, Coveney Peter V
| 期刊: | Interface Focus | 影响因子: | 4.000 |
| 时间: | 2021 | 起止号: | 2021 Oct 12; 11(6):20210018 |
| doi: | 10.1098/rsfs.2021.0018 | ||
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