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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A comparison of sleep-wake patterns among school-age children and adolescents in Hong Kong before and during the COVID-19 pandemic
This article has 13 authors:Reviewed by ScreenIT
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Longitudinal profiles of plasma gelsolin, cytokines and antibody expression predict COVID-19 severity and hospitalization outcomes
This article has 10 authors:Reviewed by ScreenIT
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Characterization of entry pathways, species-specific ACE2 residues determining entry, and antibody neutralization evasion of Omicron BA.1, BA.1.1, BA.2, and BA.3 variants
This article has 9 authors:Reviewed by ScreenIT
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Societal COVID-19 epidemic counter measures and activities associated with SARS-CoV-2 infection in an adult unvaccinated population – a case-control study in Denmark, June 2021
This article has 5 authors:Reviewed by ScreenIT
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The Nucleocapsid Protein Of SARS-CoV-2, Combined With ODN-39M, Is A Potential Component For An Intranasal Bivalent Pancorona Vaccine
This article has 14 authors:Reviewed by ScreenIT
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OpenSAFELY NHS Service Restoration Observatory 2: changes in primary care clinical activity in England during the COVID-19 pandemic
This article has 33 authors:Reviewed by ScreenIT
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Impact of the Pandemic: Screening for Social Risk Factors in the Intensive Care Unit
This article has 7 authors:Reviewed by ScreenIT
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Development and validation of multivariable prediction models of serological response to SARS-CoV-2 vaccination in kidney transplant recipients
This article has 17 authors:Reviewed by ScreenIT
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Validation of a Deep Learning Model to aid in COVID-19 Detection from Digital Chest Radiographs
This article has 10 authors:Reviewed by ScreenIT
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One Million and Counting: Estimates of Deaths in the United States from Ancestral SARS-CoV-2 and Variants
This article has 5 authors:Reviewed by ScreenIT