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High sensitivity single cell RNA sequencing with split pool barcoding

Authors :
Vuong Tran
Efthymia Papalexi
Sarah Schroeder
Grace Kim
Ajay Sapre
Joey Pangallo
Alex Sova
Peter Matulich
Lauren Kenyon
Zeynep Sayar
Ryan Koehler
Daniel Diaz
Archita Gadkari
Kamy Howitz
Maria Nigos
Charles M. Roco
Alexander B. Rosenberg
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

Single cell RNA sequencing (scRNA-seq) has become a core tool for researchers to understand biology. As scRNA-seq has become more ubiquitous, many applications demand higher scalability and sensitivity. Split-pool combinatorial barcoding makes it possible to scale projects to hundreds of samples and millions of cells, overcoming limitations of previous droplet based technologies. However, there is still a need for increased sensitivity for both droplet and combinatorial barcoding based scRNA-seq technologies. To meet this need, here we introduce an updated combinatorial barcoding method for scRNA-seq with dramatically improved sensitivity. To assess performance, we profile a variety of sample types, including cell lines, human peripheral blood mononuclear cells (PBMCs), mouse brain nuclei, and mouse liver nuclei. When compared to the previously best performing approach, we find up to a 2.6-fold increase in unique transcripts detected per cell and up to a 1.8-fold increase in genes detected per cell. These improvements to transcript and gene detection increase the resolution of the resulting data, making it easier to distinguish cell types and states in heterogeneous samples. Split-pool combinatorial barcoding already enables scaling to millions of cells, the ability to perform scRNA-seq on previously fixed and frozen samples, and access to scRNA-seq without the need to purchase specialized lab equipment. Our hope is that by combining these previous advantages with the dramatic improvements to sensitivity presented here, we will elevate the standards and capabilities of scRNA-seq for the broader community.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........68b5256d8f4d4ac6ee5d5d0061be7637
Full Text :
https://doi.org/10.1101/2022.08.27.505512