Decoding topologically associating domains with ultra-low resolution Hi-C data by graph structural entropy

Angsheng Li, Xianchen Yin,Bingxiang Xu,Danyang Wang, Jimin Han,Yi Wei,Yun Deng, Ying Xiong,Zhihua Zhang

NATURE COMMUNICATIONS(2018)

引用 55|浏览60
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摘要
Submegabase-size topologically associating domains (TAD) have been observed in high-throughput chromatin interaction data (Hi-C). However, accurate detection of TADs depends on ultra-deep sequencing and sophisticated normalization procedures. Here we propose a fast and normalization-free method to decode the domains of chromosomes (deDoc) that utilizes structural information theory. By treating Hi-C contact matrix as a representation of a graph, deDoc partitions the graph into segments with minimal structural entropy. We show that structural entropy can also be used to determine the proper bin size of the Hi-C data. By applying deDoc to pooled Hi-C data from 10 single cells, we detect megabase-size TAD-like domains. This result implies that the modular structure of the genome spatial organization may be fundamental to even a small cohort of single cells. Our algorithms may facilitate systematic investigations of chromosomal domains on a larger scale than hitherto have been possible.
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关键词
Chromatin structure,Computational biology and bioinformatics,Genome informatics,Modularity,Science,Humanities and Social Sciences,multidisciplinary
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