Navigating the landscape of COVID-19 research through literature analysis: A bird's eye view
Lana Yeganova, Rezarta Islamaj, Qingyu Chen, Robert Leaman, Alexis, Allot, Chin-Hsuan Wei, Donald C. Comeau, Won Kim, Yifan Peng, W. John Wilbur,, Zhiyong Lu

TL;DR
This paper presents a comprehensive NLP-based analysis of over 13,000 COVID-19 articles to map research topics, identify emerging areas, and facilitate literature navigation for medical professionals.
Contribution
It introduces a framework combining named entity recognition, classification, and clustering to analyze COVID-19 literature and identify key and emerging research topics.
Findings
Identification of persistent research topics over time
Detection of emerging COVID-19 research areas
Public availability of tools and data for literature analysis
Abstract
Timely access to accurate scientific literature in the battle with the ongoing COVID-19 pandemic is critical. This unprecedented public health risk has motivated research towards understanding the disease in general, identifying drugs to treat the disease, developing potential vaccines, etc. This has given rise to a rapidly growing body of literature that doubles in number of publications every 20 days as of May 2020. Providing medical professionals with means to quickly analyze the literature and discover growing areas of knowledge is necessary for addressing their question and information needs. In this study we analyze the LitCovid collection, 13,369 COVID-19 related articles found in PubMed as of May 15th, 2020 with the purpose of examining the landscape of literature and presenting it in a format that facilitates information navigation and understanding. We do that by applying…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · COVID-19 Clinical Research Studies · COVID-19 diagnosis using AI
