HiCMC: High-Efficiency Contact Matrix Compressor

Author:

Adhisantoso Yeremia GunawanORCID,Körner Tim,Müntefering FabianORCID,Ostermann JörnORCID,Voges JanORCID

Abstract

AbstractChromosome organization plays an important role in biological processes such as replication, regulation, and transcription. One way to study the relationship between chromosome structure and its biological functions is through Hi-C studies, a genome-wide method for capturing chromosome conformations. Such studies generate vast amounts of data. The problem is exacerbated by the fact that chromosome organization is dynamic, requiring snapshots at different points in time, further increasing the amount of data to be stored. We present a novel approach called the High-Efficiency Contact Matrix Compressor (HiCMC) for efficient compression of Hi-C data. By modeling the underlying structures found in the contact matrix, such as compartments and domains, HiCMC outperforms CMC by approximately 8% and more than 50% against cooler, LZMA, and bzip2 over the state of the art across multiple cell lines and resolutions. In addition, the domain information that is embedded in the data can be used to speed up downstream analysis. HiCMC is available athttps://github.com/sXperfect/hicmc.

Publisher

Cold Spring Harbor Laboratory

Reference37 articles.

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