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McEnhancer: predicting gene expression via semi-supervised assignment of enhancers to target genes

Authors :
Hafez, D.
Karabacak, A.
Krueger, S.
Hwang, Y.C.
Wang, L.S.
Zinzen, R.P.
Ohler, U.
Publication Year :
2017
Publisher :
BioMed Central (U.K.), 2017.

Abstract

Transcriptional enhancers regulate spatio-temporal gene expression. While genomic assays can identify putative enhancers en masse, assigning target genes is a complex challenge. We devised a machine learning approach, McEnhancer, which links target genes to putative enhancers via a semi-supervised learning algorithm that predicts gene expression patterns based on enriched sequence features. Predicted expression patterns were 73-98% accurate, predicted assignments showed strong Hi-C interaction enrichment, enhancer-associated histone modifications were evident, and known functional motifs were recovered. Our model provides a general framework to link globally identified enhancers to targets and contributes to deciphering the regulatory genome.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.mdc......med..067320395788c03c9fe5809570772cb7