Most COVID-19 modelling studies are underperforming, at high risk of bias, and poorly reported
Most COVID-19 modelling studies are underperforming, at high risk of bias, and poorly reported
Prediction models for diagnosis and prognosis of covid-19 infection: systematic review and critical appraisal
BMJ 2020;369:m1328Did you know you're eligible to earn 0.5 CME credits for reading this report? Click Here
Synopsis
The COVID-19 pandemic continues to affect nearly the entire world, and has been accompanied by an 'infodemic', whereby an overabundance of information of varying quality continues to be published at unprecedented rates. Thus, the authors of this study conducted a rapid systematic review and critical appraisal of all modelling studies in the literature on the topic of COVID-19. Most studies had poo...
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