Ontology highlight
ABSTRACT:
SUBMITTER: Danko CG
PROVIDER: S-EPMC4507281 | biostudies-literature | 2015 May
REPOSITORIES: biostudies-literature
Danko Charles G CG Hyland Stephanie L SL Core Leighton J LJ Martins Andre L AL Waters Colin T CT Lee Hyung Won HW Cheung Vivian G VG Kraus W Lee WL Lis John T JT Siepel Adam A
Nature methods 20150323 5
Modifications to the global run-on and sequencing (GRO-seq) protocol that enrich for 5'-capped RNAs can be used to reveal active transcriptional regulatory elements (TREs) with high accuracy. Here, we introduce discriminative regulatory-element detection from GRO-seq (dREG), a sensitive machine learning method that uses support vector regression to identify active TREs from GRO-seq data without requiring cap-based enrichment (https://github.com/Danko-Lab/dREG/). This approach allows TREs to be a ...[more]