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Das Cochrane COVID-19 Studienregister – eine studienbasierte, strukturierte Datenbank zur effizienten Identifizierung wissenschaftlicher Evidenz
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2021
Jahr
Abstract
During a pandemic, clinicians and scientists should be able to identify the emerging scientific evidence as efficiently as possible. A study-based register is essential for this. It should be up to date, evaluate important primary databases and increase the findability of studies by classifying them according to study characteristics. In early 2020, the surge in publications on the SARS-CoV-2/COVID-19 pandemic created an urgent need for a structured database to support the rapid development of evidence-based recommendations. This short article introduces the Cochrane COVID-19 trial registry, which was developed by Cochrane in April 2020 and has been continuously refined over the past 14 months.
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