Hi-C data are commonly normalized using single sample processing methods, with focus on comparisons between regions within a given contact map. Here, we aim to compare contact maps across different samples. We demonstrate that unwanted variation, of likely technical origin, is present in Hi-C data with replicates from different individuals, and that properties of this unwanted variation change across the contact map. We present band-wise normalization and batch correction, a method for normalization and batch correction of Hi-C data and show that it substantially improves comparisons across samples, including in a quantitative trait loci analysis as well as differential enrichment across cell types.
CITATION STYLE
Fletez-Brant, K., Qiu, Y., Gorkin, D. U., Hu, M., & Hansen, K. D. (2024). Removing unwanted variation between samples in Hi-C experiments. Briefings in Bioinformatics, 25(3). https://doi.org/10.1093/bib/bbae217
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