Modeling and analysis of Hi-C data by HiSIF identifies characteristic promoter-distal loops
Posted on 2020-08-13 - 04:15
Abstract Current computational methods on Hi-C analysis focused on identifying Mb-size domains often failed to unveil the underlying functional and mechanistic relationship of chromatin structure and gene regulation. We developed a novel computational method HiSIF to identify genome-wide interacting loci. We illustrated HiSIF outperformed other tools for identifying chromatin loops. We applied it to Hi-C data in breast cancer cells and identified 21 genes with gained loops showing worse relapse-free survival in endocrine-treated patients, suggesting the genes with enhanced loops can be used for prognostic signatures for measuring the outcome of the endocrine treatment. HiSIF is available at https://github.com/yufanzhouonline/HiSIF .
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Zhou, Yufan; Cheng, Xiaolong; Yang, Yini; Li, Tian; Li, Jingwei; Huang, Tim H.-M.; et al. (2020). Modeling and analysis of Hi-C data by HiSIF identifies characteristic promoter-distal loops. figshare. Collection. https://doi.org/10.6084/m9.figshare.c.5090452.v1