Iterative correction of Hi-C data reveals hallmarks of chromosome organization
Imakaev, Maxim ; Fudenberg, Geoffrey ; McCord, Rachel Patton ; Naumova, Natalia ; Goloborodko, Anton ; Lajoie, Bryan R. ; Dekker, Job ; Mirny, Leonid A.
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Abstract
Extracting biologically meaningful information from chromosomal interactions obtained with genome-wide chromosome conformation capture (3C) analyses requires the elimination of systematic biases. We present a computational pipeline that integrates a strategy to map sequencing reads with a data-driven method for iterative correction of biases, yielding genome-wide maps of relative contact probabilities. We validate this ICE (iterative correction and eigenvector decomposition) technique on published data obtained by the high-throughput 3C method Hi-C, and we demonstrate that eigenvector decomposition of the obtained maps provides insights into local chromatin states, global patterns of chromosomal interactions, and the conserved organization of human and mouse chromosomes.
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Nat Methods. 2012 Sep 2. doi: 10.1038/nmeth.2148. [Epub ahead of print]