Ontology highlight
ABSTRACT:
SUBMITTER: Sethi A
PROVIDER: S-EPMC8073243 | biostudies-literature | 2020 Aug
REPOSITORIES: biostudies-literature
Sethi Anurag A Gu Mengting M Gumusgoz Emrah E Chan Landon L Yan Koon-Kiu KK Rozowsky Joel J Barozzi Iros I Afzal Veena V Akiyama Jennifer A JA Plajzer-Frick Ingrid I Yan Chengfei C Novak Catherine S CS Kato Momoe M Garvin Tyler H TH Pham Quan Q Harrington Anne A Mannion Brandon J BJ Lee Elizabeth A EA Fukuda-Yuzawa Yoko Y Visel Axel A Dickel Diane E DE Yip Kevin Y KY Sutton Richard R Pennacchio Len A LA Gerstein Mark M
Nature methods 20200729 8
Enhancers are important non-coding elements, but they have traditionally been hard to characterize experimentally. The development of massively parallel assays allows the characterization of large numbers of enhancers for the first time. Here, we developed a framework using Drosophila STARR-seq to create shape-matching filters based on meta-profiles of epigenetic features. We integrated these features with supervised machine-learning algorithms to predict enhancers. We further demonstrated that ...[more]