BMC Bioinformatics (Feb 2019)

MaGIC: a machine learning tool set and web application for monoallelic gene inference from chromatin

  • Svetlana Vinogradova,
  • Sachit D. Saksena,
  • Henry N. Ward,
  • Sébastien Vigneau,
  • Alexander A. Gimelbrant

DOI
https://doi.org/10.1186/s12859-019-2679-7
Journal volume & issue
Vol. 20, no. 1
pp. 1 – 5

Abstract

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Abstract Background A large fraction of human and mouse autosomal genes are subject to random monoallelic expression (MAE), an epigenetic mechanism characterized by allele-specific gene expression that varies between clonal cell lineages. MAE is highly cell-type specific and mapping it in a large number of cell and tissue types can provide insight into its biological function. Its detection, however, remains challenging. Results We previously reported that a sequence-independent chromatin signature identifies, with high sensitivity and specificity, genes subject to MAE in multiple tissue types using readily available ChIP-seq data. Here we present an implementation of this method as a user-friendly, open-source software pipeline for monoallelic gene inference from chromatin (MaGIC). The source code for the MaGIC pipeline and the Shiny app is available at https://github.com/gimelbrantlab/magic. Conclusion The pipeline can be used by researchers to map monoallelic expression in a variety of cell types using existing models and to train new models with additional sets of chromatin marks.

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