4.7 Article

Integrating and mining the chromatin landscape of cell-type specificity using self-organizing maps

Journal

GENOME RESEARCH
Volume 23, Issue 12, Pages 2136-2148

Publisher

COLD SPRING HARBOR LAB PRESS, PUBLICATIONS DEPT
DOI: 10.1101/gr.158261.113

Keywords

-

Funding

  1. Beckman Foundation
  2. Donald Bren Endowment
  3. Gordon Moore Cell Center at Caltech
  4. NIH [U54HG004576, U54HG006998, RC2HG005573, R01DK065806]
  5. Hudson Alpha Institute
  6. Penn State University
  7. EU-FP7 project STATegra [306000]
  8. Div Of Biological Infrastructure
  9. Direct For Biological Sciences [0644282] Funding Source: National Science Foundation

Ask authors/readers for more resources

We tested whether self-organizing maps (SOMs) could be used to effectively integrate, visualize, and mine diverse genomics data types, including complex chromatin signatures. A fine-grained SOM was trained on 72 ChIP-seq histone modifications and DNase-seq data sets from six biologically diverse cell lines studied by The ENCODE Project Consortium. We mined the resulting SOM to identify chromatin signatures related to sequence-specific transcription factor occupancy, sequence motif enrichment, and biological functions. To highlight clusters enriched for specific functions such as transcriptional promoters or enhancers, we overlaid onto the map additional data sets not used during training, such as ChIP-seq, RNA-seq, CAGE, and information on cis-acting regulatory modules from the literature. We used the SOM to parse known transcriptional enhancers according to the cell-type-specific chromatin signature, and we further corroborated this pattern on the map by EP300 (also known as p300) occupancy. New candidate cell-type-specific enhancers were identified for multiple ENCODE cell types in this way, along with new candidates for ubiquitous enhancer activity. An interactive web interface was developed to allow users to visualize and custom-mine the ENCODE SOM. We conclude that large SOMs trained on chromatin data from multiple cell types provide a powerful way to identify complex relationships in genomic data at user-selected levels of granularity.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available