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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Key mutations on spike protein altering ACE2 receptor utilization and potentially expanding host range of emerging SARS‐CoV‐2 variants
This article has 9 authors:Reviewed by ScreenIT
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SARS-ANI: a global open access dataset of reported SARS-CoV-2 events in animals
This article has 6 authors:Reviewed by ScreenIT
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Integrated network-based multiple computational analyses for identification of co-expressed candidate genes associated with neurological manifestations of COVID-19
This article has 4 authors:Reviewed by ScreenIT
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Subtyping of major SARS-CoV-2 variants reveals different transmission dynamics based on 10 million genomes
This article has 9 authors:Reviewed by ScreenIT
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Receptor-binding domain of SARS-CoV-2 is a functional αv-integrin agonist
This article has 3 authors:Reviewed by ScreenIT
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Risk and severity of SARS-CoV-2 reinfections during 2020–2022 in Vojvodina, Serbia: A population-level observational study
This article has 11 authors:Reviewed by ScreenIT
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Self-reported mask use among persons with or without SARS CoV-2 vaccination —United States, December 2020–August 2021
This article has 13 authors:Reviewed by ScreenIT
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Effectiveness of two and three mRNA COVID‐19 vaccine doses against Omicron‐ and Delta‐Related outpatient illness among adults, October 2021–February 2022
This article has 21 authors:Reviewed by ScreenIT
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Implications of red state/blue state differences in COVID-19 death rates
This article has 1 author:Reviewed by ScreenIT
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Longitudinal associations between physical activity and other health behaviours during the COVID-19 pandemic: a fixed effects analysis
This article has 5 authors:Reviewed by ScreenIT