A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis

BackgroundShortly after the emergence of COVID-19, researchers rapidly mobilized to study numerous aspects of the disease such as its evolution, clinical manifestations, effects, treatments, and vaccinations. This led to a rapid increase in the number of COVID-19–related publ...

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Main Authors: Abd-Alrazaq, Alaa, Schneider, Jens, Mifsud, Borbala, Alam, Tanvir, Househ, Mowafa, Hamdi, Mounir, Shah, Zubair
Format: Article
Language:English
Published: JMIR Publications 2021-03-01
Series:Journal of Medical Internet Research
Online Access:https://www.jmir.org/2021/3/e23703
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spelling doaj-f04e30b59979429d9a90723ff8edce0f2021-04-02T20:14:50ZengJMIR PublicationsJournal of Medical Internet Research1438-88712021-03-01233e2370310.2196/23703A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric AnalysisAbd-Alrazaq, AlaaSchneider, JensMifsud, BorbalaAlam, TanvirHouseh, MowafaHamdi, MounirShah, Zubair BackgroundShortly after the emergence of COVID-19, researchers rapidly mobilized to study numerous aspects of the disease such as its evolution, clinical manifestations, effects, treatments, and vaccinations. This led to a rapid increase in the number of COVID-19–related publications. Identifying trends and areas of interest using traditional review methods (eg, scoping and systematic reviews) for such a large domain area is challenging. ObjectiveWe aimed to conduct an extensive bibliometric analysis to provide a comprehensive overview of the COVID-19 literature. MethodsWe used the COVID-19 Open Research Dataset (CORD-19) that consists of a large number of research articles related to all coronaviruses. We used a machine learning–based method to analyze the most relevant COVID-19–related articles and extracted the most prominent topics. Specifically, we used a clustering algorithm to group published articles based on the similarity of their abstracts to identify research hotspots and current research directions. We have made our software accessible to the community via GitHub. ResultsOf the 196,630 publications retrieved from the database, we included 28,904 in our analysis. The mean number of weekly publications was 990 (SD 789.3). The country that published the highest number of COVID-19–related articles was China (2950/17,270, 17.08%). The highest number of articles were published in bioRxiv. Lei Liu affiliated with the Southern University of Science and Technology in China published the highest number of articles (n=46). Based on titles and abstracts alone, we were able to identify 1515 surveys, 733 systematic reviews, 512 cohort studies, 480 meta-analyses, and 362 randomized control trials. We identified 19 different topics covered among the publications reviewed. The most dominant topic was public health response, followed by clinical care practices during the COVID-19 pandemic, clinical characteristics and risk factors, and epidemic models for its spread. ConclusionsWe provide an overview of the COVID-19 literature and have identified current hotspots and research directions. Our findings can be useful for the research community to help prioritize research needs and recognize leading COVID-19 researchers, institutes, countries, and publishers. Our study shows that an AI-based bibliometric analysis has the potential to rapidly explore a large corpus of academic publications during a public health crisis. We believe that this work can be used to analyze other eHealth-related literature to help clinicians, administrators, and policy makers to obtain a holistic view of the literature and be able to categorize different topics of the existing research for further analyses. It can be further scaled (for instance, in time) to clinical summary documentation. Publishers should avoid noise in the data by developing a way to trace the evolution of individual publications and unique authors.https://www.jmir.org/2021/3/e23703
collection DOAJ
language English
format Article
sources DOAJ
author Abd-Alrazaq, Alaa
Schneider, Jens
Mifsud, Borbala
Alam, Tanvir
Househ, Mowafa
Hamdi, Mounir
Shah, Zubair
spellingShingle Abd-Alrazaq, Alaa
Schneider, Jens
Mifsud, Borbala
Alam, Tanvir
Househ, Mowafa
Hamdi, Mounir
Shah, Zubair
A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
Journal of Medical Internet Research
author_facet Abd-Alrazaq, Alaa
Schneider, Jens
Mifsud, Borbala
Alam, Tanvir
Househ, Mowafa
Hamdi, Mounir
Shah, Zubair
author_sort Abd-Alrazaq, Alaa
title A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
title_short A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
title_full A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
title_fullStr A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
title_full_unstemmed A Comprehensive Overview of the COVID-19 Literature: Machine Learning–Based Bibliometric Analysis
title_sort comprehensive overview of the covid-19 literature: machine learning–based bibliometric analysis
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2021-03-01
description BackgroundShortly after the emergence of COVID-19, researchers rapidly mobilized to study numerous aspects of the disease such as its evolution, clinical manifestations, effects, treatments, and vaccinations. This led to a rapid increase in the number of COVID-19–related publications. Identifying trends and areas of interest using traditional review methods (eg, scoping and systematic reviews) for such a large domain area is challenging. ObjectiveWe aimed to conduct an extensive bibliometric analysis to provide a comprehensive overview of the COVID-19 literature. MethodsWe used the COVID-19 Open Research Dataset (CORD-19) that consists of a large number of research articles related to all coronaviruses. We used a machine learning–based method to analyze the most relevant COVID-19–related articles and extracted the most prominent topics. Specifically, we used a clustering algorithm to group published articles based on the similarity of their abstracts to identify research hotspots and current research directions. We have made our software accessible to the community via GitHub. ResultsOf the 196,630 publications retrieved from the database, we included 28,904 in our analysis. The mean number of weekly publications was 990 (SD 789.3). The country that published the highest number of COVID-19–related articles was China (2950/17,270, 17.08%). The highest number of articles were published in bioRxiv. Lei Liu affiliated with the Southern University of Science and Technology in China published the highest number of articles (n=46). Based on titles and abstracts alone, we were able to identify 1515 surveys, 733 systematic reviews, 512 cohort studies, 480 meta-analyses, and 362 randomized control trials. We identified 19 different topics covered among the publications reviewed. The most dominant topic was public health response, followed by clinical care practices during the COVID-19 pandemic, clinical characteristics and risk factors, and epidemic models for its spread. ConclusionsWe provide an overview of the COVID-19 literature and have identified current hotspots and research directions. Our findings can be useful for the research community to help prioritize research needs and recognize leading COVID-19 researchers, institutes, countries, and publishers. Our study shows that an AI-based bibliometric analysis has the potential to rapidly explore a large corpus of academic publications during a public health crisis. We believe that this work can be used to analyze other eHealth-related literature to help clinicians, administrators, and policy makers to obtain a holistic view of the literature and be able to categorize different topics of the existing research for further analyses. It can be further scaled (for instance, in time) to clinical summary documentation. Publishers should avoid noise in the data by developing a way to trace the evolution of individual publications and unique authors.
url https://www.jmir.org/2021/3/e23703
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