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Prediction of histone post-translational modification patterns based on nascent transcription data.

Zhong WangAlexandra G ChivuLauren A ChoateEdward J RiceDonald C MillerTinyi ChuShao-Pei ChouNicole B KingsleyJessica L PetersenCarrie J FinnoRebecca R BelloneDouglas F AntczakJohn T LisCharles G Danko
Published in: Nature genetics (2022)
The role of histone modifications in transcription remains incompletely understood. Here, we examine the relationship between histone modifications and transcription using experimental perturbations combined with sensitive machine-learning tools. Transcription predicted the variation in active histone marks and complex chromatin states, like bivalent promoters, down to single-nucleosome resolution and at an accuracy that rivaled the correspondence between independent ChIP-seq experiments. Blocking transcription rapidly removed two punctate marks, H3K4me3 and H3K27ac, from chromatin indicating that transcription is required for active histone modifications. Transcription was also required for maintenance of H3K27me3, consistent with a role for RNA in recruiting PRC2. A subset of DNase-I-hypersensitive sites were refractory to prediction, precluding models where transcription initiates pervasively at any open chromatin. Our results, in combination with past literature, support a model in which active histone modifications serve a supportive, rather than an essential regulatory, role in transcription.
Keyphrases
  • transcription factor
  • dna methylation
  • machine learning
  • genome wide
  • gene expression
  • dna damage
  • high throughput
  • oxidative stress
  • big data
  • deep learning
  • rna seq