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Genome-Wide Prediction of cis-Regulatory Regions Using Supervised Deep Learning Methods

Yifeng Li, Wenqiang Shi, Wyeth W Wasserman
doi: https://doi.org/10.1101/041616
Yifeng Li
Department of Medical Genetics, University of British Columbia
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  • For correspondence: yifeng@cmmt.ubc.ca
Wenqiang Shi
Department of Medical Genetics, University of British Columbia
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Wyeth W Wasserman
Department of Medical Genetics, University of British Columbia
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Abstract

Identifying active cis-regulatory regions in the human genome is critical for understanding gene regulation and assessing the impact of genetic variation on phenotype. Based on rich data resources such as the Encyclopedia of DNA Elements (ENCODE) and the Functional Annotation of the Mammalian Genome (FANTOM) projects, we introduce DECRES, the first supervised deep learning approach for the identification of enhancer and promoter regions in the human genome. Due to their ability to discover patterns in large and complex data, the introduction of deep learning methods enables a significant advance in our knowledge of the genomic locations of cis-regulatory regions. Using models for well-characterized cell lines, we identify key experimental features that contribute to the predictive performance. Applying DECRES, we delineate locations of 300,000 candidate enhancers genome wide (6.8% of the genome, of which 40,000 are supported by bidirectional transcription data) and 26,000 candidate promoters (0.6% of the genome).

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The copyright holder for this preprint is the author/funder. It is made available under a CC-BY-NC-ND 4.0 International license.
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  • Posted February 28, 2016.

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Genome-Wide Prediction of cis-Regulatory Regions Using Supervised Deep Learning Methods
Yifeng Li, Wenqiang Shi, Wyeth W Wasserman
bioRxiv 041616; doi: https://doi.org/10.1101/041616
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Genome-Wide Prediction of cis-Regulatory Regions Using Supervised Deep Learning Methods
Yifeng Li, Wenqiang Shi, Wyeth W Wasserman
bioRxiv 041616; doi: https://doi.org/10.1101/041616

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