URL: | https://astx.shinyapps.io/F3UTER |
Full name: | Finding 3' Un-translated Expressed Regions |
Description: | F3UTER is a machine learning-based framework which leverages both genomic and tissue-specific transcriptomic features to predict previously unannotated 3’UTRs in the human genome. F3UTER was applied to transcriptomic data covering 39 human tissues studied within GTEx, enabling the identification of tissue-specific unannotated 3’UTRs for 1,563 genes. |
Year founded: | 2022 |
Last update: | 2022-04-27 |
Version: | v1.0 |
Accessibility: |
Accessible
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Country/Region: | United Kingdom |
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University/Institution: | University College London |
Address: | Department of Neurodegenerative Disease, Institute of Neurology, University College London, London, UK. |
City: | London |
Province/State: | London |
Country/Region: | United Kingdom |
Contact name (PI/Team): | Mina Ryten |
Contact email (PI/Helpdesk): | mina.ryten@ucl.ac.uk |