Login / Signup

Epiphany: predicting Hi-C contact maps from 1D epigenomic signals.

Rui YangArnav DasVianne R GaoAlireza KarbalaygharehWilliam S NobleJeffery A BilmesChristina S Leslie
Published in: Genome biology (2023)
Recent deep learning models that predict the Hi-C contact map from DNA sequence achieve promising accuracy but cannot generalize to new cell types and or even capture differences among training cell types. We propose Epiphany, a neural network to predict cell-type-specific Hi-C contact maps from widely available epigenomic tracks. Epiphany uses bidirectional long short-term memory layers to capture long-range dependencies and optionally a generative adversarial network architecture to encourage contact map realism. Epiphany shows excellent generalization to held-out chromosomes within and across cell types, yields accurate TAD and interaction calls, and predicts structural changes caused by perturbations of epigenomic signals.
Keyphrases
  • single cell
  • deep learning
  • cell therapy
  • neural network
  • stem cells
  • high resolution
  • bone marrow
  • cell free
  • convolutional neural network
  • virtual reality
  • circulating tumor cells