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Genome-wide prediction of DNase I hypersensitivity using gene expression

Author

Listed:
  • Weiqiang Zhou

    (Johns Hopkins University Bloomberg School of Public Health)

  • Ben Sherwood

    (Johns Hopkins University Bloomberg School of Public Health
    School of Business, University of Kansas)

  • Zhicheng Ji

    (Johns Hopkins University Bloomberg School of Public Health)

  • Yingchao Xue

    (Hugo W. Moser Research Institute at Kennedy Krieger and Johns Hopkins University School of Medicine)

  • Fang Du

    (Johns Hopkins University Bloomberg School of Public Health)

  • Jiawei Bai

    (Johns Hopkins University Bloomberg School of Public Health)

  • Mingyao Ying

    (Hugo W. Moser Research Institute at Kennedy Krieger and Johns Hopkins University School of Medicine)

  • Hongkai Ji

    (Johns Hopkins University Bloomberg School of Public Health)

Abstract

We evaluate the feasibility of using a biological sample’s transcriptome to predict its genome-wide regulatory element activities measured by DNase I hypersensitivity (DH). We develop BIRD, Big Data Regression for predicting DH, to handle this high-dimensional problem. Applying BIRD to the Encyclopedia of DNA Elements (ENCODE) data, we found that to a large extent gene expression predicts DH, and information useful for prediction is contained in the whole transcriptome rather than limited to a regulatory element’s neighboring genes. We show applications of BIRD-predicted DH in predicting transcription factor-binding sites (TFBSs), turning publicly available gene expression samples in Gene Expression Omnibus (GEO) into a regulome database, predicting differential regulatory element activities, and facilitating regulome data analyses by serving as pseudo-replicates. Besides improving our understanding of the regulome–transcriptome relationship, this study suggests that transcriptome-based prediction can provide a useful new approach for regulome mapping.

Suggested Citation

  • Weiqiang Zhou & Ben Sherwood & Zhicheng Ji & Yingchao Xue & Fang Du & Jiawei Bai & Mingyao Ying & Hongkai Ji, 2017. "Genome-wide prediction of DNase I hypersensitivity using gene expression," Nature Communications, Nature, vol. 8(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:8:y:2017:i:1:d:10.1038_s41467-017-01188-x
    DOI: 10.1038/s41467-017-01188-x
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