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scASfind - mining alternative splicing patterns in single-cell atlas

Introduction

The emergence of large single cell RNA-seq(scRNA-seq) datasets facilitates biological discoveries at single-cell resolution. The information encoded in single cell atlases should be readily accessible to users from all disciplines. The Hemberg lab has developed scfind, a search engine for gene expression patterns in cell atlases scfind.

scASfind is built on top of scfind and it adapts scfind to alternative splicing analysis. Through querying with splicing features or cell types, scASfind conducts rapid searching and returns feature-enriched cell types or cell type-specific splicing signatures, respectively. scASfind also discovers cell type-specific mutually exclusive exon pairs and clustered spliced-in or spliced-out of a block of exons by enumerating over all possible combinations of splicing events.

Quantification of single cell alternative splicing events is performed by Whippet integrated in the workflow MicroExonator. scASfind builds custom indices for any single-cell dataset using the output files of Whippet.

Installation

To install or run scASfind, use the following codes in an R session:

install.packages("devtools")
devtools::install_github("hemberg-lab/scASfind")
library(scASfind)

User guide

Please refer to the scASfind package Vignette for a detailed user guide. The example scASfind index can be downloaded here (too big).

Contact

Please contact Yuyao Song ([email protected]) for any enquiries or bug reports.