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SCAVENGE is a method to optimize the inference of functional and genetic associations to specific cells at single-cell resolution.

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R build status License: GPL (>= 2)

SCAVENGE: Identifying genetic trait/phenotype relevant cell type/state at single cell resolution

¶ Last updated: Dec-01-2022

Overview

Co-localization approaches using genetic variants and single-cell epigenomic data are unfortunately uninformative for many cells given the extensive sparsity across single-cell profiles. Therefore, only a few cells from the truly relevant population demonstrate reliable phenotypic relevance. The global high-dimensional features of individual single cells are sufficient to represent the underlying cell identities or states, which enables the relationships among such cells to be readily inferred. By taking advantage of these attributes, SCAVENGE identifies the most phenotypically-enriched cells by co-localization and explores the transitive associations across the cell-to-cell network to assign each cell a probability representing the cell’s relevance to those phenotype-enriched cells via network propagation.

We developed a novel enrichment method (SCAVENGE) (Single Cell Analysis of Variant Enrichment through Network propagation of GEnomic data) that can discriminate between closely related cell types/states and score single cells for GWAS enrichment.

Schematic view of SCAVENGE

We’ve implemented SCAVENGE as an R package for computing single-cell based GWAS enrichments from fine-mapped posterior probabilities and quantitative epigenomic data (i.e. scATAC-seq and potentially other single-cell epigenome profiling methods).
As single-cell genomic datasets grow in volume, we expect SCAVENGE will have great promise for efficiently uncovering relevant cell populations for more phenotypes or functions in different scenarios, which may expand beyond the complex trait genetic variants we have examined here. We welcome you to use SCAVENGE to discover more phenotype relevant cells!

Installation:

The package can be installed directly from GitHub by typing the following in an R console:

if(!require("remotes")) install.packages("remotes")

remotes::install_github("https://github.com/sankaranlab/SCAVENGE")
library(SCAVENGE)

Documentation

This web resource and vignette compiliation shows how to reproduce results of SCAVENGE analysis with monocyte count on a 10X PBMC dataset.

Tutorials

See the [Wiki page] for extra information such as preparing your GWAS data for SCAVENGE (finemapping):

  • [SCAVENGE] Preparing your GWAS data for finemapping
  • [SCAVENGE] Preparing your scATAC-seq data
  • [SCAVENGE] Rule of thumb of SCAVENGE analysis and intepretation
  • [SCAVENGE-L] SCAVENGE-L method for single cell (mt)DNA mutation-based lineage tracing analysis

FAQs

  • What input data are accepted for SCAVENGE analysis?
    A: The count matrix of scATAC-seq data and fine-mapped variants from GWAS summary statistics (we provided a tutorial for fine-mapping analysis from GWAS [Wiki page]). Theoretically, GWAS summary statistics can be used as input but we do not recommend it because LD can obscure causal cell type identification.
  • Can I use scRNA-seq instead of scATAC-seq?
    A: It is not feasible for SCAVENGE analysis from scRNA-seq currently. We are actively developing this tool to be scalable to scRNA-seq, please stay tuned.
  • How can I request new feature?
    A: We open [Discussions] page, please feel free to discuss and post your ideas.

Citation

If you used or adapted SCAVENGE in your study, please cite our paper [Nat Biotechnol] || [PubMed].
Variant to function mapping at single-cell resolution through network propagation.

Contact

If you run into issues and would like to report them, you can submit an Issue.
Alternatively, you can contact authors: fyu{at}broadinstitute.org, lcato{at}broadinstitute.org, cweng{at}wi.mit.edu, and/or sankaran{at}broadinstitute.org.