Inferring diploid 3D chromatin structures from Hi-C data
Inferring diploid 3D chromatin structures from Hi-C data
Abstract The 3D organization of the genome plays a key role in many cellular processes, such as gene regulation, differentiation, and replication. Assays like Hi-C measure DNA-DNA contacts in a high-throughput fashion, and inferring accurate 3D models of chromosomes can yield insights hidden in the raw data. For example, structural inference can account for noise in the data, disambiguate the distinct structures of homologous chromosomes, orient genomic regions relative to nuclear landmarks, and serve as a framework for integrating other data types. Although many methods exist to infer the 3D structure of haploid genomes, inferring a diploid structure from Hi-C data is still an open problem. Indeed, the diploid case is very challenging, because Hi-C data typically does not distinguish between homologous chromosomes. We propose a method to infer 3D diploid genomes from Hi-C data. We demonstrate the accuarcy of the method on simulated data, and we also use the method to infer 3D structures for mouse chromosome X, confirming that the active homolog exhibits a bipartite structure, whereas the active homolog does not.
Vert Jean-Philippe、Varoquaux Nelle、Noble William Stafford、Cauer Alexandra Gesine、Yardimci G¨1rkan
Google BrainDepartment of Statistics, UC BerkeleyDepartment of Genome Sciences, University of Washington, Paul G. Allen School of Computer Science and Engineering, University of WashingtonDepartment of Genome Sciences, University of WashingtonDepartment of Genome Sciences, University of Washington
生物科学理论、生物科学方法生物科学研究方法、生物科学研究技术遗传学
Vert Jean-Philippe,Varoquaux Nelle,Noble William Stafford,Cauer Alexandra Gesine,Yardimci G¨1rkan.Inferring diploid 3D chromatin structures from Hi-C data[EB/OL].(2025-03-28)[2025-08-02].https://www.biorxiv.org/content/10.1101/644294.点此复制
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