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
-
Spectrum of Adverse Event Following COVID-19 Immunization in High Altitude, Nepal
This article has 9 authors:Reviewed by ScreenIT
-
SARS-CoV-2 Spike protein suppresses CTL-mediated killing by inhibiting immune synapse assembly
This article has 12 authors:Reviewed by ScreenIT
-
Hyperbaric Oxygen for Treatment of Long COVID Syndrome (HOT-LoCO); Protocol for a Randomised, Placebo-Controlled, Double-Blind, Phase II Clinical Trial
This article has 18 authors:Reviewed by ScreenIT
-
Deep mutational scanning identifies SARS-CoV-2 Nucleocapsid escape mutations of currently available rapid antigen tests
This article has 14 authors:Reviewed by ScreenIT
-
Evaluation of anti-spike glycoprotein antibody and neutralizing antibody response of different vaccine platforms. A protocol of systematic review and meta-analysis of COVID-19 vaccine clinical trial studies
This article has 8 authors:Reviewed by ScreenIT
-
Clinical validation of 3D-printed nasopharyngeal and oropharyngeal swabs for SARS-CoV-2 RT-PCR
This article has 10 authors:Reviewed by ScreenIT
-
COVID-19 lockdown reveals fish density may be much higher in marine reserves
This article has 5 authors:Reviewed by ScreenIT
-
Programming the lymph node immune response with Amphiphile-CpG induces potent cellular and humoral immunity following COVID-19 subunit vaccination in mice and non-human primates
This article has 10 authors:Reviewed by ScreenIT
-
Parameter Estimation for a Modified SEIR Model of the COVID-19 Dynamics in the Philippines using Genetic Algorithm
This article has 1 author:Reviewed by ScreenIT
-
COMPARISON OF SARS-COV-2 WUHAN AND ALPHA VARIANTS: CLINICAL AND LABORATORY HIGHLIGHTS
This article has 6 authors:Reviewed by ScreenIT