Comprehensive Mapping of Long-Range Interactions Reveals Folding Principles of the Human Genome

Erez Lieberman-Aiden(Broad Institute), Nynke L. van Berkum(University of Massachusetts Chan Medical School), Louise Williams(Broad Institute), Maxim Imakaev(Harvard–MIT Division of Health Sciences and Technology), Tobias Ragoczy(University of Washington), Agnes Telling(University of Washington), Ido Amit(Broad Institute), Bryan R. Lajoie(University of Massachusetts Chan Medical School), Peter J. Sabo(University of Washington), Michael O. Dorschner(University of Washington), Richard Sandstrom(University of Washington), B Bernstein(Broad Institute), M. A. Bender(University of Washington), Mark Groudine(University of Washington), Andreas Gnirke(Broad Institute), J Stamatoyannopoulos(University of Washington), Leonid A. Mirny(Harvard–MIT Division of Health Sciences and Technology), Eric S. Lander(Broad Institute), Job Dekker(University of Massachusetts Chan Medical School)
Science
October 8, 2009
Cited by 9,570Open Access
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Abstract

We describe Hi-C, a method that probes the three-dimensional architecture of whole genomes by coupling proximity-based ligation with massively parallel sequencing. We constructed spatial proximity maps of the human genome with Hi-C at a resolution of 1 megabase. These maps confirm the presence of chromosome territories and the spatial proximity of small, gene-rich chromosomes. We identified an additional level of genome organization that is characterized by the spatial segregation of open and closed chromatin to form two genome-wide compartments. At the megabase scale, the chromatin conformation is consistent with a fractal globule, a knot-free, polymer conformation that enables maximally dense packing while preserving the ability to easily fold and unfold any genomic locus. The fractal globule is distinct from the more commonly used globular equilibrium model. Our results demonstrate the power of Hi-C to map the dynamic conformations of whole genomes.


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