dozmorovlab/multiHiCcompare: Normalize and detect differences between Hi-C datasets when replicates of each experimental condition are available

multiHiCcompare provides functions for joint normalization and difference detection in multiple Hi-C datasets. This extension of the original HiCcompare package now allows for Hi-C experiments with more than 2 groups and multiple samples per group. multiHiCcompare operates on processed Hi-C data in the form of sparse upper triangular matrices. It accepts four column (chromosome, region1, region2, IF) tab-separated text files storing chromatin interaction matrices. multiHiCcompare provides cyclic loess and fast loess (fastlo) methods adapted to jointly normalizing Hi-C data. Additionally, it provides a general linear model (GLM) framework adapting the edgeR package to detect differences in Hi-C data in a distance dependent manner.

Getting started

Package details

AuthorJohn Stansfield <stansfieldjc@vcu.edu>, Mikhail Dozmorov <mikhail.dozmorov@vcuhealth.org>
Bioconductor views HiC Normalization Sequencing Software
MaintainerJohn Stansfield <stansfieldjc@vcu.edu>, Mikhail Dozmorov <mikhail.dozmorov@vcuhealth.org>
LicenseMIT + file LICENSE
Version1.13.0
URL https://github.com/dozmorovlab/multiHiCcompare
Package repositoryView on GitHub
Installation Install the latest version of this package by entering the following in R:
install.packages("remotes")
remotes::install_github("dozmorovlab/multiHiCcompare")
dozmorovlab/multiHiCcompare documentation built on April 23, 2022, 9:56 a.m.