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Integrating Diverse Datasets Improves Developmental Enhancer Prediction

Erwin, GD and Oksenberg, N and Truty, RM and Kostka, D and Murphy, KK and Ahituv, N and Pollard, KS and Capra, JA (2014) Integrating Diverse Datasets Improves Developmental Enhancer Prediction. PLoS Computational Biology, 10 (6). ISSN 1553-734X

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Abstract

Gene-regulatory enhancers have been identified using various approaches, including evolutionary conservation, regulatory protein binding, chromatin modifications, and DNA sequence motifs. To integrate these different approaches, we developed EnhancerFinder, a two-step method for distinguishing developmental enhancers from the genomic background and then predicting their tissue specificity. EnhancerFinder uses a multiple kernel learning approach to integrate DNA sequence motifs, evolutionary patterns, and diverse functional genomics datasets from a variety of cell types. In contrast with prediction approaches that define enhancers based on histone marks or p300 sites from a single cell line, we trained EnhancerFinder on hundreds of experimentally verified human developmental enhancers from the VISTA Enhancer Browser. We comprehensively evaluated EnhancerFinder using cross validation and found that our integrative method improves the identification of enhancers over approaches that consider a single type of data, such as sequence motifs, evolutionary conservation, or the binding of enhancer-associated proteins. We find that VISTA enhancers active in embryonic heart are easier to identify than enhancers active in several other embryonic tissues, likely due to their uniquely high GC content. We applied EnhancerFinder to the entire human genome and predicted 84,301 developmental enhancers and their tissue specificity. These predictions provide specific functional annotations for large amounts of human non-coding DNA, and are significantly enriched near genes with annotated roles in their predicted tissues and lead SNPs from genome-wide association studies. We demonstrate the utility of EnhancerFinder predictions through in vivo validation of novel embryonic gene regulatory enhancers from three developmental transcription factor loci. Our genome-wide developmental enhancer predictions are freely available as a UCSC Genome Browser track, which we hope will enable researchers to further investigate questions in developmental biology. © 2014 Erwin et al.


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Details

Item Type: Article
Status: Published
Creators/Authors:
CreatorsEmailPitt UsernameORCID
Erwin, GD
Oksenberg, N
Truty, RM
Kostka, Dkostka@pitt.eduKOSTKA
Murphy, KK
Ahituv, N
Pollard, KS
Capra, JA
Contributors:
ContributionContributors NameEmailPitt UsernameORCID
EditorOhler, UweUNSPECIFIEDUNSPECIFIEDUNSPECIFIED
Date: 1 January 2014
Date Type: Publication
Journal or Publication Title: PLoS Computational Biology
Volume: 10
Number: 6
DOI or Unique Handle: 10.1371/journal.pcbi.1003677
Schools and Programs: School of Medicine > Computational and Systems Biology
School of Medicine > Developmental Biology
Refereed: Yes
ISSN: 1553-734X
Date Deposited: 02 Jul 2014 17:32
Last Modified: 02 Feb 2019 13:58
URI: http://d-scholarship.pitt.edu/id/eprint/22183

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