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scHiCTools: A computational toolbox for analyzing single-cell Hi-C data.

Xinjun LiFan FengHongxi PuWai Yan LeungJie Liu
Published in: PLoS computational biology (2021)
Single-cell Hi-C (scHi-C) sequencing technologies allow us to investigate three-dimensional chromatin organization at the single-cell level. However, we still need computational tools to deal with the sparsity of the contact maps from single cells and embed single cells in a lower-dimensional Euclidean space. This embedding helps us understand relationships between the cells in different dimensions, such as cell-cycle dynamics and cell differentiation. We present an open-source computational toolbox, scHiCTools, for analyzing single-cell Hi-C data comprehensively and efficiently. The toolbox provides two methods for screening single cells, three common methods for smoothing scHi-C data, three efficient methods for calculating the pairwise similarity of cells, three methods for embedding single cells, three methods for clustering cells, and a build-in function to visualize the cells embedding in a two-dimensional or three-dimensional plot. scHiCTools, written in Python3, is compatible with different platforms, including Linux, macOS, and Windows.
Keyphrases
  • induced apoptosis
  • single cell
  • cell cycle arrest
  • cell cycle
  • rna seq
  • oxidative stress
  • endoplasmic reticulum stress
  • cell death
  • signaling pathway
  • electronic health record