Network reinforcement driven drug repurposing for COVID-19 by exploiting disease-gene-drug associations
Yonghyun Nam, Jae-Seung Yun, Seung Mi Lee, Ji Won Park, Ziqi Chen,, Brian Lee, Anurag Verma, Xia Ning, Li Shen, Dokyoon Kim

TL;DR
This paper presents a network-based framework leveraging disease-gene-drug associations to prioritize existing drugs for COVID-19 treatment, aiming to accelerate drug repurposing efforts.
Contribution
It introduces DGDr-Net, a comprehensive disease-gene-drug network, and applies graph-based semi-supervised learning to identify promising repurposable drugs for COVID-19.
Findings
Predicted 30 candidate drugs including dexamethasone and resveratrol.
Verification with clinical trial drugs supports the approach.
Reduces trial-and-error in COVID-19 drug discovery.
Abstract
Currently, the number of patients with COVID-19 has significantly increased. Thus, there is an urgent need for developing treatments for COVID-19. Drug repurposing, which is the process of reusing already-approved drugs for new medical conditions, can be a good way to solve this problem quickly and broadly. Many clinical trials for COVID-19 patients using treatments for other diseases have already been in place or will be performed at clinical sites in the near future. Additionally, patients with comorbidities such as diabetes mellitus, obesity, liver cirrhosis, kidney diseases, hypertension, and asthma are at higher risk for severe illness from COVID-19. Thus, the relationship of comorbidity disease with COVID-19 may help to find repurposable drugs. To reduce trial and error in finding treatments for COVID-19, we propose building a network-based drug repurposing framework to prioritize…
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Taxonomy
TopicsComputational Drug Discovery Methods · SARS-CoV-2 and COVID-19 Research · Bioinformatics and Genomic Networks
