Publication | Open Access
Demuxalot: scaled up genetic demultiplexing for single-cell sequencing
14
Citations
17
References
2021
Year
Unknown Venue
GeneticsGenetic EpidemiologyTranscriptomics TechnologyGenomicsProbabilistic Genotype InferenceSingle Cell SequencingComputational GenomicsBiostatisticsPublic HealthRna SequencingStatistical GeneticsSingle-cell GenomicsGenetic DemultiplexingSingle-cell AnalysisFunctional GenomicsSequencingBioinformaticsPrior Genotype InformationNext-generation SequencingComputational BiologyAbstract Demultiplexing MethodsSystems BiologyMedicineGenome Editing
ABSTRACT Demultiplexing methods have facilitated the widespread use of single-cell RNA sequencing (scRNAseq) experiments by lowering costs and reducing technical variations. Here, we present demuxalot : a method for probabilistic genotype inference from aligned reads, with no assumptions about allele ratios and efficient incorporation of prior genotype information from historical experiments in a multi-batch setting. Our method efficiently incorporates additional information across reads originating from the same transcript, enabling up to 3x more calls per read relative to naive approaches. We also propose a novel and highly performant tradeoff between methods that rely on reference genotypes and methods that learn variants from the data, by selecting a small number of highly informative variants that maximize the marginal information with respect to reference single nucleotide variants (SNVs). Our resulting improved SNV-based demultiplex method is up to 3x faster, 3x more data efficient, and achieves significantly more accurate doublet discrimination than previously published methods. This approach renders scRNAseq feasible for the kind of large multi-batch, multi-donor studies that are required to prosecute diseases with heterogeneous genetic backgrounds.
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