Litcius/Paper detail

An overview of literature on COVID-19, MERS and SARS: Using text mining and latent Dirichlet allocation

Xian Cheng, Qiang Cao, Stephen Shaoyi Liao

2020Journal of Information Science71 citationsDOIOpen Access PDF

Abstract

The unprecedented outbreak of COVID-19 is one of the most serious global threats to public health in this century. During this crisis, specialists in information science could play key roles to support the efforts of scientists in the health and medical community for combatting COVID-19. In this article, we demonstrate that information specialists can support health and medical community by applying text mining technique with latent Dirichlet allocation procedure to perform an overview of a mass of coronavirus literature. This overview presents the generic research themes of the coronavirus diseases: COVID-19, MERS and SARS, reveals the representative literature per main research theme and displays a network visualisation to explore the overlapping, similarity and difference among these themes. The overview can help the health and medical communities to extract useful information and interrelationships from coronavirus-related studies.

Topics & Concepts

Latent Dirichlet allocationTopic modelCoronavirus disease 2019 (COVID-19)Similarity (geometry)Data scienceTheme (computing)Public healthSevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)Health informaticsCoronavirus2019-20 coronavirus outbreakComputer scienceMedicineOutbreakInformation retrievalWorld Wide WebVirologyArtificial intelligencePathologyImage (mathematics)DiseaseNursingInfectious disease (medical specialty)Machine Learning in HealthcareTopic ModelingCOVID-19 diagnosis using AI