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Trends in COVID-19 Publications: Streamlining Research Using NLP and LDA.

Published version
Peer-reviewed

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Authors

Gupta, Akash 
Aeron, Shrey 
Agrawal, Anjali 
Gupta, Himanshu 

Abstract

Background: Research publications related to the novel coronavirus disease COVID-19 are rapidly increasing. However, current online literature hubs, even with artificial intelligence, are limited in identifying the complexity of COVID-19 research topics. We developed a comprehensive Latent Dirichlet Allocation (LDA) model with 25 topics using natural language processing (NLP) techniques on PubMed® research articles about "COVID." We propose a novel methodology to develop and visualise temporal trends, and improve existing online literature hubs. Our results for temporal evolution demonstrate interesting trends, for example, the prominence of "Mental Health" and "Socioeconomic Impact" increased, "Genome Sequence" decreased, and "Epidemiology" remained relatively constant. Applying our methodology to LitCovid, a literature hub from the National Center for Biotechnology Information, we improved the breadth and depth of research topics by subdividing their pre-existing categories. Our topic model demonstrates that research on "masks" and "Personal Protective Equipment (PPE)" is skewed toward clinical applications with a lack of population-based epidemiological research.

Description

Keywords

COVID-19, LitCovid, Pubmed, latent dirichlet allocation, natural language processing, topic model, trends

Journal Title

Front Digit Health

Conference Name

Journal ISSN

2673-253X
2673-253X

Volume Title

3

Publisher

Frontiers Media SA