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Genome-wide prediction of DNase I hypersensitivity using gene expression.

Weiqiang ZhouBen SherwoodZhicheng JiYingchao XueFang DuJiawei BaiMingyao YingHongkai Ji
Published in: Nature communications (2017)
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.
Keyphrases
  • gene expression
  • genome wide
  • dna methylation
  • big data
  • transcription factor
  • artificial intelligence
  • copy number
  • machine learning
  • rna seq
  • single cell
  • high resolution
  • single molecule
  • dna binding
  • social media