A scalable SCENIC workflow for single-cell gene regulatory network analysis

被引:0
|
作者
Bram Van de Sande
Christopher Flerin
Kristofer Davie
Maxime De Waegeneer
Gert Hulselmans
Sara Aibar
Ruth Seurinck
Wouter Saelens
Robrecht Cannoodt
Quentin Rouchon
Toni Verbeiren
Dries De Maeyer
Joke Reumers
Yvan Saeys
Stein Aerts
机构
[1] KU Leuven,VIB Center for Brain & Disease Research
[2] KU Leuven,Department of Human Genetics
[3] VIB Center for Inflammation Research,Data Mining and Modelling for Biomedicine
[4] Ghent University,Department of Applied Mathematics, Computer Science and Statistics
[5] Ghent University Hospital,Center for Medical Genetics
[6] Janssen Pharmaceutica,undefined
[7] Data Intuitive,undefined
来源
Nature Protocols | 2020年 / 15卷
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摘要
This protocol explains how to perform a fast SCENIC analysis alongside standard best practices steps on single-cell RNA-sequencing data using software containers and Nextflow pipelines. SCENIC reconstructs regulons (i.e., transcription factors and their target genes) assesses the activity of these discovered regulons in individual cells and uses these cellular activity patterns to find meaningful clusters of cells. Here we present an improved version of SCENIC with several advances. SCENIC has been refactored and reimplemented in Python (pySCENIC), resulting in a tenfold increase in speed, and has been packaged into containers for ease of use. It is now also possible to use epigenomic track databases, as well as motifs, to refine regulons. In this protocol, we explain the different steps of SCENIC: the workflow starts from the count matrix depicting the gene abundances for all cells and consists of three stages. First, coexpression modules are inferred using a regression per-target approach (GRNBoost2). Next, the indirect targets are pruned from these modules using cis-regulatory motif discovery (cisTarget). Lastly, the activity of these regulons is quantified via an enrichment score for the regulon’s target genes (AUCell). Nonlinear projection methods can be used to display visual groupings of cells based on the cellular activity patterns of these regulons. The results can be exported as a loom file and visualized in the SCope web application. This protocol is illustrated on two use cases: a peripheral blood mononuclear cell data set and a panel of single-cell RNA-sequencing cancer experiments. For a data set of 10,000 genes and 50,000 cells, the pipeline runs in <2 h.
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页码:2247 / 2276
页数:29
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