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Analyzing knowledge entities about COVID-19 using entitymetrics.

Qi YuQi WangYafei ZhangChongyan ChenHyeyoung RyuNamu ParkJae-Eun BaekKeyuan LiYifei WuDaifeng LiJian XuMeijun LiuJeremy J YangChenwei ZhangChao LuPeng ZhangXin LiBaitong ChenIslam Akef EbeidJulia FenselChao MinYujia ZhaiMin SongYing DingYi Bu
Published in: Scientometrics (2021)
COVID-19 cases have surpassed the 109 + million markers, with deaths tallying up to 2.4 million. Tens of thousands of papers regarding COVID-19 have been published along with countless bibliometric analyses done on COVID-19 literature. Despite this, none of the analyses have focused on domain entities occurring in scientific publications. However, analysis of these bio-entities and the relations among them, a strategy called entity metrics, could offer more insights into knowledge usage and diffusion in specific cases. Thus, this paper presents an entitymetric analysis on COVID-19 literature. We construct an entity-entity co-occurrence network and employ network indicators to analyze the extracted entities. We find that ACE-2 and C-reactive protein are two very important genes and that lopinavir and ritonavir are two very important chemicals, regardless of the results from either ranking.
Keyphrases
  • coronavirus disease
  • sars cov
  • healthcare
  • systematic review
  • randomized controlled trial
  • genome wide
  • network analysis