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Live-seq enables temporal transcriptomic recording of single cells

Author

Listed:
  • Wanze Chen

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics
    Chinese Academy of Sciences)

  • Orane Guillaume-Gentil

    (ETH Zurich)

  • Pernille Yde Rainer

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Christoph G. Gäbelein

    (ETH Zurich)

  • Wouter Saelens

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Vincent Gardeux

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Amanda Klaeger

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Riccardo Dainese

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Magda Zachara

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

  • Tomaso Zambelli

    (ETH Zurich)

  • Julia A. Vorholt

    (ETH Zurich)

  • Bart Deplancke

    (Swiss Federal Institute of Technology (EPFL)
    Swiss Institute of Bioinformatics)

Abstract

Single-cell transcriptomics (scRNA-seq) has greatly advanced our ability to characterize cellular heterogeneity1. However, scRNA-seq requires lysing cells, which impedes further molecular or functional analyses on the same cells. Here, we established Live-seq, a single-cell transcriptome profiling approach that preserves cell viability during RNA extraction using fluidic force microscopy2,3, thus allowing to couple a cell’s ground-state transcriptome to its downstream molecular or phenotypic behaviour. To benchmark Live-seq, we used cell growth, functional responses and whole-cell transcriptome read-outs to demonstrate that Live-seq can accurately stratify diverse cell types and states without inducing major cellular perturbations. As a proof of concept, we show that Live-seq can be used to directly map a cell’s trajectory by sequentially profiling the transcriptomes of individual macrophages before and after lipopolysaccharide (LPS) stimulation, and of adipose stromal cells pre- and post-differentiation. In addition, we demonstrate that Live-seq can function as a transcriptomic recorder by preregistering the transcriptomes of individual macrophages that were subsequently monitored by time-lapse imaging after LPS exposure. This enabled the unsupervised, genome-wide ranking of genes on the basis of their ability to affect macrophage LPS response heterogeneity, revealing basal Nfkbia expression level and cell cycle state as important phenotypic determinants, which we experimentally validated. Thus, Live-seq can address a broad range of biological questions by transforming scRNA-seq from an end-point to a temporal analysis approach.

Suggested Citation

  • Wanze Chen & Orane Guillaume-Gentil & Pernille Yde Rainer & Christoph G. Gäbelein & Wouter Saelens & Vincent Gardeux & Amanda Klaeger & Riccardo Dainese & Magda Zachara & Tomaso Zambelli & Julia A. Vo, 2022. "Live-seq enables temporal transcriptomic recording of single cells," Nature, Nature, vol. 608(7924), pages 733-740, August.
  • Handle: RePEc:nat:nature:v:608:y:2022:i:7924:d:10.1038_s41586-022-05046-9
    DOI: 10.1038/s41586-022-05046-9
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    Cited by:

    1. Kun Yin & Yiling Xu & Ye Guo & Zhong Zheng & Xinrui Lin & Meijuan Zhao & He Dong & Dianyi Liang & Zhi Zhu & Junhua Zheng & Shichao Lin & Jia Song & Chaoyong Yang, 2024. "Dyna-vivo-seq unveils cellular RNA dynamics during acute kidney injury via in vivo metabolic RNA labeling-based scRNA-seq," Nature Communications, Nature, vol. 15(1), pages 1-14, December.

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