Seqanswers Leaderboard Ad

Collapse

Announcement

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

  • How did the edgeR authors compute Figure 2 (genewise deviance statistics?)

    **UPDATE**
    I've migrated (aka copied) this question over to the biostars forum: https://www.biostars.org/p/244455/. Please look there for further discussion.

    McCarthy, D.J., Chen, Y., and Smyth, G.K. (2012). Differential expression analysis of multifactor RNA-Seq experiments with respect to biological variation. Nucleic Acids Res 40, 4288–4297.

    https://academic.oup.com/nar/article/40/10/4288/2411520/Differential-expression-analysis-of-multifactor


    In Figure 2 of this paper, the authors show that estimating dispersion on a per-gene basis is more compatible with their data. Am I allowed to attach it here as an image? If so, I gladly will do!

    I think understand broadly what is being demonstrated here (please correct me if I'm mistaken): When we estimate dispersions, that is an implicit model of the ratio of the mean to the standard deviation of each gene. Here, the authors are showing, with QQ plots, that the per-gene model describes the observed ratio better than a common dispersion value. Each dot in the plot corresponds to a gene.

    I'd like to generate this figure for my own data, but I don't understand how to compute the two vectors required. I'm guessing that one might be the log likelihood after fitting the GLM?

    Thanks for any light you can shed (code also gratefully appreciated, but no obligation)
    Last edited by gabe_rosser; 03-29-2017, 01:44 AM. Reason: Add details of post on another forum

Latest Articles

Collapse

  • seqadmin
    Recent Advances in Sequencing Analysis Tools
    by seqadmin


    The sequencing world is rapidly changing due to declining costs, enhanced accuracies, and the advent of newer, cutting-edge instruments. Equally important to these developments are improvements in sequencing analysis, a process that converts vast amounts of raw data into a comprehensible and meaningful form. This complex task requires expertise and the right analysis tools. In this article, we highlight the progress and innovation in sequencing analysis by reviewing several of the...
    Today, 07:48 AM
  • seqadmin
    Essential Discoveries and Tools in Epitranscriptomics
    by seqadmin




    The field of epigenetics has traditionally concentrated more on DNA and how changes like methylation and phosphorylation of histones impact gene expression and regulation. However, our increased understanding of RNA modifications and their importance in cellular processes has led to a rise in epitranscriptomics research. “Epitranscriptomics brings together the concepts of epigenetics and gene expression,” explained Adrien Leger, PhD, Principal Research Scientist...
    04-22-2024, 07:01 AM

ad_right_rmr

Collapse

News

Collapse

Topics Statistics Last Post
Started by seqadmin, Today, 07:17 AM
0 responses
8 views
0 likes
Last Post seqadmin  
Started by seqadmin, 05-02-2024, 08:06 AM
0 responses
19 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-30-2024, 12:17 PM
0 responses
20 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-29-2024, 10:49 AM
0 responses
28 views
0 likes
Last Post seqadmin  
Working...
X