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Enhancer-driven gene regulatory networks inference from single-cell RNA-seq and ATAC-seq data

Yang Li, Anjun Ma, Yizhong Wang, Qi Guo, Cankun Wang, Hongjun Fu, Bingqiang Liu, Qin Ma

2024Briefings in Bioinformatics14 citationsDOIOpen Access PDF

Abstract

Deciphering the intricate relationships between transcription factors (TFs), enhancers, and genes through the inference of enhancer-driven gene regulatory networks (eGRNs) is crucial in understanding gene regulatory programs in a complex biological system. This study introduces STREAM, a novel method that leverages a Steiner forest problem model, a hybrid biclustering pipeline, and submodular optimization to infer eGRNs from jointly profiled single-cell transcriptome and chromatin accessibility data. Compared to existing methods, STREAM demonstrates enhanced performance in terms of TF recovery, TF-enhancer linkage prediction, and enhancer-gene relation discovery. Application of STREAM to an Alzheimer's disease dataset and a diffuse small lymphocytic lymphoma dataset reveals its ability to identify TF-enhancer-gene relations associated with pseudotime, as well as key TF-enhancer-gene relations and TF cooperation underlying tumor cells.

Topics & Concepts

EnhancerComputational biologyInferenceGeneBiologyEnhancer RNAsRNA-SeqGene regulatory networkComputer scienceChromatinPipeline (software)Transcription factorTranscriptomeGeneticsGene expressionArtificial intelligenceProgramming languageSingle-cell and spatial transcriptomicsGenomics and Chromatin DynamicsRNA Research and Splicing
Enhancer-driven gene regulatory networks inference from single-cell RNA-seq and ATAC-seq data | Litcius