4.8 Article

Highly Parallel Genome-wide Expression Profiling of Individual Cells Using Nanoliter Droplets

Journal

CELL
Volume 161, Issue 5, Pages 1202-1214

Publisher

CELL PRESS
DOI: 10.1016/j.cell.2015.05.002

Keywords

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Funding

  1. Stanley Center for Psychiatric Research
  2. MGH Psychiatry Residency Research Program
  3. Stanley-MGH Fellowship in Psychiatric Neuroscience
  4. Stewart Trust Fellows Award
  5. Simons Foundation
  6. NHGRI CEGS [P50 HG006193]
  7. Klarman Cell Observatory
  8. NIMH [U01MH105960, R25MH094612]
  9. NIH [F32 HD075541]
  10. National Science Foundation [ECS-0335765, DMR-1310266]
  11. Harvard Materials Research Science and Engineering Center [DMR-1420570]
  12. Direct For Mathematical & Physical Scien
  13. Division Of Materials Research [1310266] Funding Source: National Science Foundation

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Cells, the basic units of biological structure and function, vary broadly in type and state. Single-cell genomics can characterize cell identity and function, but limitations of ease and scale have prevented its broad application. Here we describe Drop-seq, a strategy for quickly profiling thousands of individual cells by separating them into nanoliter-sized aqueous droplets, associating a different barcode with each cell's RNAs, and sequencing them all together. Drop-seq analyzes mRNA transcripts from thousands of individual cells simultaneously while remembering transcripts' cell of origin. We analyzed transcriptomes from 44,808 mouse retinal cells and identified 39 transcriptionally distinct cell populations, creating a molecular atlas of gene expression for known retinal cell classes and novel candidate cell subtypes. Drop-seq will accelerate biological discovery by enabling routine transcriptional profiling at single-cell resolution.

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