A hybrid single cell demultiplexing strategy that increases both cell recovery rate and calling accuracy.

TitleA hybrid single cell demultiplexing strategy that increases both cell recovery rate and calling accuracy.
Publication TypeJournal Article
Year of Publication2023
AuthorsLi L, Sun J, Fu Y, Changrob S, McGrath JJC, Wilson PC
JournalbioRxiv
Date Published2023 Apr 04
Abstract

Recent advances in single cell RNA sequencing allow users to pool multiple samples into one run and demultiplex in downstream analysis, greatly increasing the experimental efficiency and cost-effectiveness. However, the expensive reagents for cell labeling, limited pooling capacity, non-ideal cell recovery rate and calling accuracy remain great challenges for this approach. To date, there are two major demultiplexing methods, antibody-based cell hashing and Single Nucleotide Polymorphism (SNP)-based genomic signature profiling, and each method has advantages and limitations. Here, we propose a hybrid demultiplexing strategy that increases calling accuracy and cell recovery at the same time. We first develop a computational algorithm that significantly increases calling accuracy of cell hashing. Next, we cluster all single cells based on their SNP profiles. Finally, we integrate results from both methods to make corrections and retrieve cells that are only identifiable in one method but not the other. By testing on several real-world datasets, we demonstrate that this hybrid strategy combines advantages of both methods, resulting in increased cell recovery and calling accuracy at lower cost.

DOI10.1101/2023.04.02.535299
Custom 1

https://www.ncbi.nlm.nih.gov/pubmed/37066221?dopt=Abstract

Alternate JournalbioRxiv
PubMed ID37066221
PubMed Central IDPMC10104010

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