Metabolomics,Unknown,Transcriptomics,Genomics,Proteomics

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Characterization of the single-cell (ES and MEF) transcriptional landscape by highly multiplex RNA-Seq


ABSTRACT: Our understanding of the development and maintenance of tissues has been greatly aided by large-scale gene expression analysis. However, tissues are invariably complex, and expression analysis of a tissue confounds the true expression patterns of its constitutent cell types. Here we describe a novel strategy to access such complex samples. Single-cell RNA-Seq expression profiles were generated, and clustered to form a two-dimensional cell map onto which expression data was projected. The resulting cell map integrates three levels of organization: the whole population of cells, the functionally distinct subpopulations it contains, and the single cells themselves—all without need for known markers to classify cell types. The feasibility of the strategy was demonstrated by analyzing the complete transcriptomes of 92 single cells of two distinct types. We believe this strategy will enable the unbiased discovery and analysis of naturally occurring cell types during development, adult physiology and disease. 92 single cells (48 mouse ES cells, 44 mouse embryonic fibroblasts and 4 negative controls) were analyzed by single-cell tagged reverse transcription (STRT)

ORGANISM(S): Mus musculus

SUBMITTER: Sten Linnarsson 

PROVIDER: E-GEOD-29087 | biostudies-arrayexpress |

REPOSITORIES: biostudies-arrayexpress

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Characterization of the single-cell transcriptional landscape by highly multiplex RNA-seq.

Islam Saiful S   Kjällquist Una U   Moliner Annalena A   Zajac Pawel P   Fan Jian-Bing JB   Lönnerberg Peter P   Linnarsson Sten S  

Genome research 20110504 7


Our understanding of the development and maintenance of tissues has been greatly aided by large-scale gene expression analysis. However, tissues are invariably complex, and expression analysis of a tissue confounds the true expression patterns of its constituent cell types. Here we describe a novel strategy to access such complex samples. Single-cell RNA-seq expression profiles were generated, and clustered to form a two-dimensional cell map onto which expression data were projected. The resulti  ...[more]

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