Single Cell Network
Curation of Network — listings under the Single cell tab.
Summary Table
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| NAME | CATEGORY | Main citation | YEAR |
|---|---|---|---|
| SCENIC+ | Network | Bravo González-Blas C et al., Nat Methods, 2023 |
2023 |
| SCENIC | Network | Aibar S et al., Nat Methods, 2017 |
2017 |
| pySCENIC | Network | NA |
NA |
Network
SCENIC
PUBMED_LINK
URL
TITLE
SCENIC: single-cell regulatory network inference and clustering.
Main citation
Aibar S, González-Blas CB, Moerman T, Huynh-Thu VA, ...&, Aerts S. (2017) SCENIC: single-cell regulatory network inference and clustering. Nat Methods, 14 (11) 1083-1086. doi:10.1038/nmeth.4463. PMID 28991892
ABSTRACT
We present SCENIC, a computational method for simultaneous gene regulatory network reconstruction and cell-state identification from single-cell RNA-seq data (http://scenic.aertslab.org). On a compendium of single-cell data from tumors and brain, we demonstrate that cis-regulatory analysis can be exploited to guide the identification of transcription factors and cell states. SCENIC provides critical biological insights into the mechanisms driving cellular heterogeneity.
DOI
10.1038/nmeth.4463
SCENIC+
PUBMED_LINK
URL
TITLE
SCENIC+: single-cell multiomic inference of enhancers and gene regulatory networks.
Main citation
Bravo González-Blas C, De Winter S, Hulselmans G, Hecker N, ...&, Aerts S. (2023) SCENIC+: single-cell multiomic inference of enhancers and gene regulatory networks. Nat Methods, 20 (9) 1355-1367. doi:10.1038/s41592-023-01938-4. PMID 37443338
ABSTRACT
Joint profiling of chromatin accessibility and gene expression in individual cells provides an opportunity to decipher enhancer-driven gene regulatory networks (GRNs). Here we present a method for the inference of enhancer-driven GRNs, called SCENIC+. SCENIC+ predicts genomic enhancers along with candidate upstream transcription factors (TFs) and links these enhancers to candidate target genes. To improve both recall and precision of TF identification, we curated and clustered a motif collection with more than 30,000 motifs. We benchmarked SCENIC+ on diverse datasets from different species, including human peripheral blood mononuclear cells, ENCODE cell lines, melanoma cell states and Drosophila retinal development. Next, we exploit SCENIC+ predictions to study conserved TFs, enhancers and GRNs between human and mouse cell types in the cerebral cortex. Finally, we use SCENIC+ to study the dynamics of gene regulation along differentiation trajectories and the effect of TF perturbations on cell state. SCENIC+ is available at scenicplus.readthedocs.io .
DOI
10.1038/s41592-023-01938-4
pySCENIC
DESCRIPTION
pySCENIC is a lightning-fast python implementation of the SCENIC pipeline (Single-Cell rEgulatory Network Inference and Clustering) which enables biologists to infer transcription factors, gene regulatory networks and cell types from single-cell RNA-seq data.
URL