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An Information Theoretic, Microfluidic-Based Single Cell Analysis Permits Identification of Subpopulations among Putatively Homogeneous Stem Cells

Author

Listed:
  • Jason P Glotzbach
  • Michael Januszyk
  • Ivan N Vial
  • Victor W Wong
  • Alexander Gelbard
  • Tomer Kalisky
  • Hariharan Thangarajah
  • Michael T Longaker
  • Stephen R Quake
  • Gilbert Chu
  • Geoffrey C Gurtner

Abstract

An incomplete understanding of the nature of heterogeneity within stem cell populations remains a major impediment to the development of clinically effective cell-based therapies. Transcriptional events within a single cell are inherently stochastic and can produce tremendous variability, even among genetically identical cells. It remains unclear how mammalian cellular systems overcome this intrinsic noisiness of gene expression to produce consequential variations in function, and what impact this has on the biologic and clinical relevance of highly ‘purified’ cell subgroups. To address these questions, we have developed a novel method combining microfluidic-based single cell analysis and information theory to characterize and predict transcriptional programs across hundreds of individual cells. Using this technique, we demonstrate that multiple subpopulations exist within a well-studied and putatively homogeneous stem cell population, murine long-term hematopoietic stem cells (LT-HSCs). These subgroups are defined by nonrandom patterns that are distinguishable from noise and are consistent with known functional properties of these cells. We anticipate that this analytic framework can also be applied to other cell types to elucidate the relationship between transcriptional and phenotypic variation.

Suggested Citation

  • Jason P Glotzbach & Michael Januszyk & Ivan N Vial & Victor W Wong & Alexander Gelbard & Tomer Kalisky & Hariharan Thangarajah & Michael T Longaker & Stephen R Quake & Gilbert Chu & Geoffrey C Gurtner, 2011. "An Information Theoretic, Microfluidic-Based Single Cell Analysis Permits Identification of Subpopulations among Putatively Homogeneous Stem Cells," PLOS ONE, Public Library of Science, vol. 6(6), pages 1-10, June.
  • Handle: RePEc:plo:pone00:0021211
    DOI: 10.1371/journal.pone.0021211
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    References listed on IDEAS

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    1. Johan Paulsson, 2004. "Summing up the noise in gene networks," Nature, Nature, vol. 427(6973), pages 415-418, January.
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