scHiCNorm: a software package to eliminate systematic biases in single-cell Hi-C data

scHiCNorm:一款用于消除单细胞Hi-C数据中系统性偏差的软件包

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Abstract

SUMMARY: We build a software package scHiCNorm that uses zero-inflated and hurdle models to remove biases from single-cell Hi-C data. Our evaluations prove that our models can effectively eliminate systematic biases for single-cell Hi-C data, which better reveal cell-to-cell variances in terms of chromosomal structures. AVAILABILITY AND IMPLEMENTATION: scHiCNorm is available at http://dna.cs.miami.edu/scHiCNorm/. Perl scripts are provided that can generate bias features. Pre-built bias features for human (hg19 and hg38) and mouse (mm9 and mm10) are available to download. R scripts can be downloaded to remove biases. CONTACT: zheng.wang@miami.edu. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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