Scientific Reports (Nov 2021)

Drug repurposing for COVID-19 using graph neural network and harmonizing multiple evidence

  • Kanglin Hsieh,
  • Yinyin Wang,
  • Luyao Chen,
  • Zhongming Zhao,
  • Sean Savitz,
  • Xiaoqian Jiang,
  • Jing Tang,
  • Yejin Kim

DOI
https://doi.org/10.1038/s41598-021-02353-5
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 13

Abstract

Read online

Abstract Since the 2019 novel coronavirus disease (COVID-19) outbreak in 2019 and the pandemic continues for more than one year, a vast amount of drug research has been conducted and few of them got FDA approval. Our objective is to prioritize repurposable drugs using a pipeline that systematically integrates the interaction between COVID-19 and drugs, deep graph neural networks, and in vitro/population-based validations. We first collected all available drugs (n = 3635) related to COVID-19 patient treatment through CTDbase. We built a COVID-19 knowledge graph based on the interactions among virus baits, host genes, pathways, drugs, and phenotypes. A deep graph neural network approach was used to derive the candidate drug’s representation based on the biological interactions. We prioritized the candidate drugs using clinical trial history, and then validated them with their genetic profiles, in vitro experimental efficacy, and population-based treatment effect. We highlight the top 22 drugs including Azithromycin, Atorvastatin, Aspirin, Acetaminophen, and Albuterol. We further pinpointed drug combinations that may synergistically target COVID-19. In summary, we demonstrated that the integration of extensive interactions, deep neural networks, and multiple evidence can facilitate the rapid identification of candidate drugs for COVID-19 treatment.