Seqanswers Leaderboard Ad

Collapse

Announcement

Collapse
No announcement yet.
X
 
  • Filter
  • Time
  • Show
Clear All
new posts

  • PubMed: Transcript assembly and quantification by RNA-Seq reveals unannotated transcr

    Syndicated from PubMed RSS Feeds

    Related Articles Transcript assembly and quantification by RNA-Seq reveals unannotated transcripts and isoform switching during cell differentiation.

    Nat Biotechnol. 2010 May 2;

    Authors: Trapnell C, Williams BA, Pertea G, Mortazavi A, Kwan G, van Baren MJ, Salzberg SL, Wold BJ, Pachter L

    High-throughput mRNA sequencing (RNA-Seq) promises simultaneous transcript discovery and abundance estimation. However, this would require algorithms that are not restricted by prior gene annotations and that account for alternative transcription and splicing. Here we introduce such algorithms in an open-source software program called Cufflinks. To test Cufflinks, we sequenced and analyzed >430 million paired 75-bp RNA-Seq reads from a mouse myoblast cell line over a differentiation time series. We detected 13,692 known transcripts and 3,724 previously unannotated ones, 62% of which are supported by independent expression data or by homologous genes in other species. Over the time series, 330 genes showed complete switches in the dominant transcription start site (TSS) or splice isoform, and we observed more subtle shifts in 1,304 other genes. These results suggest that Cufflinks can illuminate the substantial regulatory flexibility and complexity in even this well-studied model of muscle development and that it can improve transcriptome-based genome annotation.

    PMID: 20436464 [PubMed - as supplied by publisher]



    More...

  • #2
    Great paper, especially the supplementary materials. Congratulations to the authors.

    Comment


    • #3
      gene level FPKM calculation

      Hi dear seqers,
      I have hard time understanding how the gene level FPKM is calculated in
      this paper. Any one can help me out? Also tried to read the source code, which turns out too difficult for me.
      As I can check with the Cufflinks output, gene level is the sum of transcripts level FPKM multiple with a weight as fraction(reported as "fra" in the transcripts.expr file). But this bother me:
      How can you add up them this way considering that each isofrom bears different length

      Thanks,
      Lichun


      Originally posted by Newsbot! View Post
      Syndicated from PubMed RSS Feeds

      Related Articles Transcript assembly and quantification by RNA-Seq reveals unannotated transcripts and isoform switching during cell differentiation.

      Nat Biotechnol. 2010 May 2;

      Authors: Trapnell C, Williams BA, Pertea G, Mortazavi A, Kwan G, van Baren MJ, Salzberg SL, Wold BJ, Pachter L

      High-throughput mRNA sequencing (RNA-Seq) promises simultaneous transcript discovery and abundance estimation. However, this would require algorithms that are not restricted by prior gene annotations and that account for alternative transcription and splicing. Here we introduce such algorithms in an open-source software program called Cufflinks. To test Cufflinks, we sequenced and analyzed >430 million paired 75-bp RNA-Seq reads from a mouse myoblast cell line over a differentiation time series. We detected 13,692 known transcripts and 3,724 previously unannotated ones, 62% of which are supported by independent expression data or by homologous genes in other species. Over the time series, 330 genes showed complete switches in the dominant transcription start site (TSS) or splice isoform, and we observed more subtle shifts in 1,304 other genes. These results suggest that Cufflinks can illuminate the substantial regulatory flexibility and complexity in even this well-studied model of muscle development and that it can improve transcriptome-based genome annotation.

      PMID: 20436464 [PubMed - as supplied by publisher]



      More...

      Comment

      Latest Articles

      Collapse

      • seqadmin
        Best Practices for Single-Cell Sequencing Analysis
        by seqadmin



        While isolating and preparing single cells for sequencing was historically the bottleneck, recent technological advancements have shifted the challenge to data analysis. This highlights the rapidly evolving nature of single-cell sequencing. The inherent complexity of single-cell analysis has intensified with the surge in data volume and the incorporation of diverse and more complex datasets. This article explores the challenges in analysis, examines common pitfalls, offers...
        Today, 07:15 AM
      • seqadmin
        Latest Developments in Precision Medicine
        by seqadmin



        Technological advances have led to drastic improvements in the field of precision medicine, enabling more personalized approaches to treatment. This article explores four leading groups that are overcoming many of the challenges of genomic profiling and precision medicine through their innovative platforms and technologies.

        Somatic Genomics
        “We have such a tremendous amount of genetic diversity that exists within each of us, and not just between us as individuals,”...
        05-24-2024, 01:16 PM

      ad_right_rmr

      Collapse

      News

      Collapse

      Topics Statistics Last Post
      Started by seqadmin, Today, 08:18 AM
      0 responses
      8 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, Today, 08:04 AM
      0 responses
      10 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, 06-03-2024, 06:55 AM
      0 responses
      13 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, 05-30-2024, 03:16 PM
      0 responses
      27 views
      0 likes
      Last Post seqadmin  
      Working...
      X