Litcius/Paper detail

scMEGA: single-cell multi-omic enhancer-based gene regulatory network inference

Zhijian Li, James S. Nagai, Christoph Kuppe, Rafael Kramann, Ivan G. Costa

2023Bioinformatics Advances34 citationsDOIOpen Access PDF

Abstract

Summary: The increasing availability of single-cell multi-omics data allows to quantitatively characterize gene regulation. We here describe scMEGA (Single-cell Multiomic Enhancer-based Gene Regulatory Network Inference) that enables an end-to-end analysis of multi-omics data for gene regulatory network inference including modalities integration, trajectory analysis, enhancer-to-promoter association, network analysis and visualization. This enables to study the complex gene regulation mechanisms for dynamic biological processes, such as cellular differentiation and disease-driven cellular remodeling. We provide a case study on gene regulatory networks controlling myofibroblast activation in human myocardial infarction. Availability and implementation: scMEGA is implemented in R, released under the MIT license and available from https://github.com/CostaLab/scMEGA. Tutorials are available from https://costalab.github.io/scMEGA. Supplementary information: online.

Topics & Concepts

Gene regulatory networkEnhancerComputational biologyInferenceMIT LicenseComputer scienceBiologyGeneBiological networkGene expressionLicenseGeneticsArtificial intelligenceOperating systemSingle-cell and spatial transcriptomicsBioinformatics and Genomic NetworksCardiac Fibrosis and Remodeling