Souporcell: robust clustering of single-cell RNA-seq data by genotype without reference genotypes

H Heaton, AM Talman, A Knights, M Imaz, DJ Gaffney… - Nature …, 2020 - nature.com
Nature methods, 2020nature.com
Methods to deconvolve single-cell RNA-sequencing (scRNA-seq) data are necessary for
samples containing a mixture of genotypes, whether they are natural or experimentally
combined. Multiplexing across donors is a popular experimental design that can avoid batch
effects, reduce costs and improve doublet detection. By using variants detected in scRNA-
seq reads, it is possible to assign cells to their donor of origin and identify cross-genotype
doublets that may have highly similar transcriptional profiles, precluding detection by …
Abstract
Methods to deconvolve single-cell RNA-sequencing (scRNA-seq) data are necessary for samples containing a mixture of genotypes, whether they are natural or experimentally combined. Multiplexing across donors is a popular experimental design that can avoid batch effects, reduce costs and improve doublet detection. By using variants detected in scRNA-seq reads, it is possible to assign cells to their donor of origin and identify cross-genotype doublets that may have highly similar transcriptional profiles, precluding detection by transcriptional profile. More subtle cross-genotype variant contamination can be used to estimate the amount of ambient RNA. Ambient RNA is caused by cell lysis before droplet partitioning and is an important confounder of scRNA-seq analysis. Here we develop souporcell, a method to cluster cells using the genetic variants detected within the scRNA-seq reads. We show that it achieves high accuracy on genotype clustering, doublet detection and ambient RNA estimation, as demonstrated across a range of challenging scenarios.
nature.com