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Supervised enhancer prediction with epigenetic pattern recognition and targeted validation.

Anurag SethiMengting GuEmrah GumusgozLandon ChanKoon-Kiu YanJoel RozowskyIros BarozziVeena AfzalJennifer A AkiyamaIngrid Plajzer-FrickChengfei YanCatherine S NovakMomoe KatoTyler H GarvinQuan PhamAnne HarringtonBrandon J MannionElizabeth A LeeYoko Fukuda-YuzawaAxel ViselDiane E DickelKevin Y YipRichard SuttonLen A PennacchioMark B Gerstein
Published in: Nature methods (2020)
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 our model could be transferred to predict enhancers in mammals. We comprehensively validated the predictions using a combination of in vivo and in vitro approaches, involving transgenic assays in mice and transduction-based reporter assays in human cell lines (153 enhancers in total). The results confirmed that our model can accurately predict enhancers in different species without re-parameterization. Finally, we examined the transcription factor binding patterns at predicted enhancers versus promoters. We demonstrated that these patterns enable the construction of a secondary model that effectively distinguishes enhancers and promoters.
Keyphrases
  • machine learning
  • transcription factor
  • high throughput
  • endothelial cells
  • dna methylation
  • gene expression
  • type diabetes
  • crispr cas
  • big data
  • genome wide
  • metabolic syndrome
  • rna seq
  • wild type