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Published in: BMC Medical Research Methodology 1/2021

Open Access 01-12-2021 | COVID-19 | Research article

COVID-19-related medical research: a meta-research and critical appraisal

Authors: Marc Raynaud, Huanxi Zhang, Kevin Louis, Valentin Goutaudier, Jiali Wang, Quentin Dubourg, Yongcheng Wei, Zeynep Demir, Charlotte Debiais, Olivier Aubert, Yassine Bouatou, Carmen Lefaucheur, Patricia Jabre, Longshan Liu, Changxi Wang, Xavier Jouven, Peter Reese, Jean-Philippe Empana, Alexandre Loupy

Published in: BMC Medical Research Methodology | Issue 1/2021

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Abstract

Background

Since the start of the COVID-19 outbreak, a large number of COVID-19-related papers have been published. However, concerns about the risk of expedited science have been raised. We aimed at reviewing and categorizing COVID-19-related medical research and to critically appraise peer-reviewed original articles.

Methods

The data sources were Pubmed, Cochrane COVID-19 register study, arXiv, medRxiv and bioRxiv, from 01/11/2019 to 01/05/2020. Peer-reviewed and preprints publications related to COVID-19 were included, written in English or Chinese. No limitations were placed on study design. Reviewers screened and categorized studies according to i) publication type, ii) country of publication, and iii) topics covered. Original articles were critically appraised using validated quality assessment tools.

Results

Among the 11,452 publications identified, 10,516 met the inclusion criteria, among which 7468 (71.0%) were peer-reviewed articles. Among these, 4190 publications (56.1%) did not include any data or analytics (comprising expert opinion pieces). Overall, the most represented topics were infectious disease (n = 2326, 22.1%), epidemiology (n = 1802, 17.1%), and global health (n = 1602, 15.2%). The top five publishing countries were China (25.8%), United States (22.3%), United Kingdom (8.8%), Italy (8.1%) and India (3.4%). The dynamic of publication showed that the exponential growth of COVID-19 peer-reviewed articles was mainly driven by publications without original data (mean 261.5 articles ± 51.1 per week) as compared with original articles (mean of 69.3 ± 22.3 articles per week). Original articles including patient data accounted for 713 (9.5%) of peer-reviewed studies. A total of 576 original articles (80.8%) showed intermediate to high risk of bias. Last, except for simulation studies that mainly used large-scale open data, the median number of patients enrolled was of 102 (IQR = 37–337).

Conclusions

Since the beginning of the COVID-19 pandemic, the majority of research is composed by publications without original data. Peer-reviewed original articles with data showed a high risk of bias and included a limited number of patients. Together, these findings underscore the urgent need to strike a balance between the velocity and quality of research, and to cautiously consider medical information and clinical applicability in a pressing, pandemic context.

Systematic review registration

Appendix
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Metadata
Title
COVID-19-related medical research: a meta-research and critical appraisal
Authors
Marc Raynaud
Huanxi Zhang
Kevin Louis
Valentin Goutaudier
Jiali Wang
Quentin Dubourg
Yongcheng Wei
Zeynep Demir
Charlotte Debiais
Olivier Aubert
Yassine Bouatou
Carmen Lefaucheur
Patricia Jabre
Longshan Liu
Changxi Wang
Xavier Jouven
Peter Reese
Jean-Philippe Empana
Alexandre Loupy
Publication date
01-12-2021
Publisher
BioMed Central
Keyword
COVID-19
Published in
BMC Medical Research Methodology / Issue 1/2021
Electronic ISSN: 1471-2288
DOI
https://doi.org/10.1186/s12874-020-01190-w

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