ScreenIT
The Automated Screening Working Groups is a group of software engineers and biologists passionate about improving scientific manuscripts on a large scale. Our members have created tools that check for common problems in scientific manuscripts, including information needed to improve transparency and reproducibility. We have combined our tools into a single pipeline, called ScreenIT. We're currently using our tools to screen COVID preprints.
Latest preprint reviews
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Massive image-based single-cell profiling reveals high levels of circulating platelet aggregates in patients with COVID-19
This article has 24 authors:Reviewed by ScreenIT
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SARS-CoV-2 seroprevalence in Germany - a population based sequential study in five regions
This article has 25 authors:Reviewed by ScreenIT
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Efficacy and safety of baricitinib in patients with COVID-19 infection: Results from the randomised, double-blind, placebo-controlled, parallel-group COV-BARRIER phase 3 trial
This article has 19 authors:Reviewed by ScreenIT
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Convergent antibody responses to the SARS-CoV-2 spike protein in convalescent and vaccinated individuals
This article has 22 authors:Reviewed by ScreenIT
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Combination Respiratory Vaccine Containing Recombinant SARS-CoV-2 Spike and Quadrivalent Seasonal Influenza Hemagglutinin Nanoparticles with Matrix-M Adjuvant
This article has 13 authors:Reviewed by ScreenIT
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Derivation and external validation of a simple risk score to predict in-hospital mortality in patients hospitalized for COVID-19
This article has 8 authors:Reviewed by ScreenIT
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Emergence and spread of SARS-CoV-2 lineage B.1.620 with variant of concern-like mutations and deletions
This article has 70 authors:Reviewed by ScreenIT
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COVID ‐19 Vaccine‐Associated Cerebral Venous Thrombosis in Germany
This article has 14 authors:Reviewed by ScreenIT
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Expansion of tissue-resident CD8+ T cells and CD4+ Th17 cells in the nasal mucosa following mRNA COVID-19 vaccination
This article has 17 authors:Reviewed by ScreenIT
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Quantifying the relationship between SARS-CoV-2 viral load and infectiousness
This article has 8 authors:Reviewed by ScreenIT