Publication | Closed Access
Scaling single cell transcriptomics through split pool barcoding
38
Citations
38
References
2017
Year
Unknown Venue
EngineeringSingle Cell TranscriptomicsCollective EffortMultiomicsTranscriptomics TechnologyGenomicsHigh Throughput SequencingCustom MicrofluidicsSingle Cell SequencingTranscriptomicsRna SequencingSingle-cell GenomicsOmicsGene ExpressionSingle-cell AnalysisFunctional GenomicsSequencingCell BiologyBioinformaticsDevelopmental BiologyComputational BiologyMouse BrainSystems BiologyMedicine
Constructing an atlas of cell types in complex organisms will require a collective effort to characterize billions of individual cells. Single cell RNA sequencing (scRNA-seq) has emerged as the main tool for characterizing cellular diversity, but current methods use custom microfluidics or microwells to compartmentalize single cells, limiting scalability and widespread adoption. Here we present Split Pool Ligation-based Transcriptome sequencing (SPLiT-seq), a scRNA-seq method that labels the cellular origin of RNA through combinatorial indexing. SPLiT-seq is compatible with fixed cells, scales exponentially, uses only basic laboratory equipment, and costs one cent per cell. We used this approach to analyze 109,069 single cell transcriptomes from an entire postnatal day 5 mouse brain, providing the first global snapshot at this stage of development. We identified 13 main populations comprising different types of neurons, glia, immune cells, endothelia, as well as types in the blood-brain-barrier. Moreover, we resolve substructure within these clusters corresponding to cells at different stages of development. As sequencing capacity increases, SPLiT-seq will enable profiling of billions of cells in a single experiment.
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