2024
DOI: 10.1093/bioinformatics/btae223
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scGrapHiC: deep learning-based graph deconvolution for Hi-C using single cell gene expression

Ghulam Murtaza,
Byron Butaney,
Justin Wagner
et al.

Abstract: Summary Single-cell Hi-C (scHi-C) protocol helps identify cell-type-specific chromatin interactions and sheds light on cell differentiation and disease progression. Despite providing crucial insights, scHi-C data is often underutilized due to the high cost and the complexity of the experimental protocol. We present a deep learning framework, scGrapHiC, that predicts pseudo-bulk scHi-C contact maps using pseudo-bulk scRNA-seq data. Specifically, scGrapHiC performs graph deconvolution to extrac… Show more

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