Litcius/Paper detail

Double-jeopardy: scRNA-seq doublet/multiplet detection using multi-omic profiling

Bo Sun, Emmanuel Bugarín-Estrada, Lauren Overend, Catherine Elizabeth Walker, Felicia Anna Tucci, Rachael Bashford-Rogers

2021Cell Reports Methods20 citationsDOIOpen Access PDF

Abstract

The computational detection and exclusion of cellular doublets and/or multiplets is a cornerstone for the identification the true biological signals from single-cell RNA sequencing (scRNA-seq) data. Current methods do not sensitively identify both heterotypic and homotypic doublets and/or multiplets. Here, we describe a machine learning approach for doublet/multiplet detection utilizing VDJ-seq and/or CITE-seq data to predict their presence based on transcriptional features associated with identified hybrid droplets. This approach highlights the utility of leveraging multi-omic single-cell information for the generation of high-quality datasets. Our method has high sensitivity and specificity in inflammatory-cell-dominant scRNA-seq samples, thus presenting a powerful approach to ensuring high-quality scRNA-seq data.

Topics & Concepts

MultipletComputational biologyProfiling (computer programming)RNA-SeqChemistryComputer scienceBiologyPhysicsTranscriptomeGeneBiochemistryGene expressionOperating systemAstronomySpectral lineSingle-cell and spatial transcriptomicsExtracellular vesicles in diseaseCancer Genomics and Diagnostics