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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Overview on COVID-19 outbreak indicators across Brazilian federative units
This article has 11 authors:Reviewed by ScreenIT
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Limiting spread of COVID-19 in Ghana: Compliance audit of selected transportation stations in the Greater Accra region of Ghana
This article has 6 authors:Reviewed by ScreenIT
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Performance characteristics of the ID NOW COVID-19 assay: A regional health care system experience
This article has 6 authors:Reviewed by ScreenIT
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Racial, ethnic, and socioeconomic disparities in confirmed COVID-19 cases and deaths in the United States: a county-level analysis as of November 2020
This article has 1 author:Reviewed by ScreenIT
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Disparities in COVID-19 related knowledge, attitudes, beliefs and behaviours by health literacy
This article has 13 authors:Reviewed by ScreenIT
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Early Phase of the COVID-19 Outbreak in Hungary and Post-Lockdown Scenarios
This article has 12 authors:Reviewed by ScreenIT
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Association of Bacille Calmette-Guérin (BCG), Adult Pneumococcal and Adult Seasonal Influenza Vaccines with Covid-19 Adjusted Mortality Rates in Level 4 European countries
This article has 3 authors:Reviewed by ScreenIT
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Early indicators of intensive care unit bed requirement during the COVID-19 epidemic: A retrospective study in Ile-de-France region, France
This article has 1 author:Reviewed by ScreenIT
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Covid-19 Epidemiological Factor Analysis: Identifying Principal Factors with Machine Learning
This article has 1 author:Reviewed by ScreenIT
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Nasal host response-based screening for undiagnosed respiratory viruses: a pathogen surveillance and detection study
This article has 15 authors:Reviewed by ScreenIT