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DeepLoop 能够从稀疏的等位基因分辨或单细胞 Hi-C 数据中以千碱基分辨率稳健地绘制染色质相互作用图谱。

DeepLoop robustly maps chromatin interactions from sparse allele-resolved or single-cell Hi-C data at kilobase resolution.

机构信息

Department of Genetics and Genome Sciences, School of Medicine, Case Western Reserve University, Cleveland, OH, USA.

The Biomedical Sciences Training Program, School of Medicine, Case Western Reserve University, Cleveland, OH, USA.

出版信息

Nat Genet. 2022 Jul;54(7):1013-1025. doi: 10.1038/s41588-022-01116-w. Epub 2022 Jul 11.

DOI:10.1038/s41588-022-01116-w
PMID:35817982
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10082397/
Abstract

Mapping chromatin loops from noisy Hi-C heatmaps remains a major challenge. Here we present DeepLoop, which performs rigorous bias correction followed by deep-learning-based signal enhancement for robust chromatin interaction mapping from low-depth Hi-C data. DeepLoop enables loop-resolution, single-cell Hi-C analysis. It also achieves a cross-platform convergence between different Hi-C protocols and micrococcal nuclease (micro-C). DeepLoop allowed us to map the genetic and epigenetic determinants of allele-specific chromatin interactions in the human genome. We nominate new loci with allele-specific interactions governed by imprinting or allelic DNA methylation. We also discovered that, in the inactivated X chromosome (X), local loops at the DXZ4 'megadomain' boundary escape X-inactivation but the FIRRE 'superloop' locus does not. Importantly, DeepLoop can pinpoint heterozygous single-nucleotide polymorphisms and large structure variants that cause allelic chromatin loops, many of which rewire enhancers with transcription consequences. Taken together, DeepLoop expands the use of Hi-C to provide loop-resolution insights into the genetics of the three-dimensional genome.

摘要

从嘈杂的 Hi-C 热图中绘制染色质环仍然是一个主要挑战。在这里,我们提出了 DeepLoop,它执行严格的偏差校正,然后进行基于深度学习的信号增强,从而能够从低深度 Hi-C 数据中稳健地绘制染色质相互作用图谱。DeepLoop 能够实现环分辨率、单细胞 Hi-C 分析。它还实现了不同 Hi-C 方案和微球菌核酸酶 (micro-C) 之间的跨平台收敛。DeepLoop 使我们能够绘制人类基因组中等位基因特异性染色质相互作用的遗传和表观遗传决定因素。我们提名了新的具有印记或等位基因 DNA 甲基化控制的等位基因特异性相互作用的位点。我们还发现,在失活的 X 染色体 (X) 中,DXZ4“超大域”边界处的局部环逃避了 X 失活,但 FIRRE“超级环”位点没有。重要的是,DeepLoop 可以精确定位导致等位基因染色质环的杂合单核苷酸多态性和大结构变体,其中许多会重新连接具有转录后果的增强子。总之,DeepLoop 扩展了 Hi-C 的使用范围,为三维基因组的遗传学提供了环分辨率的见解。

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