Abstract

The ENCODE Project has generated a wealth of experimental information mapping diverse chromatin properties in several human cell lines. Although each such data track is independently informative toward the annotation of regulatory elements, their interrelations contain much richer information for the systematic annotation of regulatory elements. To uncover these interrelations and to generate an interpretable summary of the massive datasets of the ENCODE Project, we apply unsupervised learning methodologies, converting dozens of chromatin datasets into discrete annotation maps of regulatory regions and other chromatin elements across the human genome. These methods rediscover and summarize diverse aspects of chromatin architecture, elucidate the interplay between chromatin activity and RNA transcription, and reveal that a large proportion of the genome lies in a quiescent state, even across multiple cell types. The resulting annotation of non-coding regulatory elements correlate strongly with mammalian evolutionary constraint, and provide an unbiased approach for evaluating metrics of evolutionary constraint in human. Lastly, we use the regulatory annotations to revisit previously uncharacterized disease-associated loci, resulting in focused, testable hypotheses through the lens of the chromatin landscape.

Keywords

ENCODEChromatinBiologyAnnotationComputational biologyGenomeChIA-PETHuman genomeGenome projectConstraint (computer-aided design)GeneticsGeneChromatin remodeling

Affiliated Institutions

Related Publications

Publication Info

Year
2012
Type
article
Volume
41
Issue
2
Pages
827-841
Citations
595
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

595
OpenAlex

Cite This

Michael M. Hoffman, Jason Ernst, Steven P. Wilder et al. (2012). Integrative annotation of chromatin elements from ENCODE data. Nucleic Acids Research , 41 (2) , 827-841. https://doi.org/10.1093/nar/gks1284

Identifiers

DOI
10.1093/nar/gks1284