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      mRNA-Seq whole-transcriptome analysis of a single cell.

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          Abstract

          Next-generation sequencing technology is a powerful tool for transcriptome analysis. However, under certain conditions, only a small amount of material is available, which requires more sensitive techniques that can preferably be used at the single-cell level. Here we describe a single-cell digital gene expression profiling assay. Using our mRNA-Seq assay with only a single mouse blastomere, we detected the expression of 75% (5,270) more genes than microarray techniques and identified 1,753 previously unknown splice junctions called by at least 5 reads. Moreover, 8-19% of the genes with multiple known transcript isoforms expressed at least two isoforms in the same blastomere or oocyte, which unambiguously demonstrated the complexity of the transcript variants at whole-genome scale in individual cells. Finally, for Dicer1(-/-) and Ago2(-/-) (Eif2c2(-/-)) oocytes, we found that 1,696 and 1,553 genes, respectively, were abnormally upregulated compared to wild-type controls, with 619 genes in common.

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          Author and article information

          Journal
          Nat Methods
          Nature methods
          Springer Science and Business Media LLC
          1548-7105
          1548-7091
          May 2009
          : 6
          : 5
          Affiliations
          [1 ] Wellcome Trust-Cancer Research UK Gurdon Institute of Cancer and Developmental Biology, University of Cambridge, Cambridge, UK.
          Article
          nmeth.1315
          10.1038/nmeth.1315
          19349980
          613a7f33-6808-4d67-8943-8b8272ecf4fa
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