Seqanswers Leaderboard Ad

Collapse

Announcement

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

  • DEXSeq vs htseq-count/DESeq counting model

    I have found DESeq very useful and am giving DEXSeq a spin. After reading through the DEXSeq vignette, I thought the most efficient path would be to do read counting with the included 'dexseq_count.py' script, use the output for DEXSeq analysis, and then use the 'geneCountTable' function to get per-gene counts for DESeq.

    I already have counts tables for some of these replicates generated using 'htseq-count' with the union model. A quick look through the 'dexseq_count.py' source suggests that it also uses the same union model, so I did some quick comparisons to make sure the results were consistent. However, the number of counts generated for each gene by 'htseq-count' are usually less than the sum of the exon counts generated by dexseq_count.py for the same dataset.

    It appears that when reads are split over exon boundaries, 'dexseq_count.py' includes the read in each exon count. This results in a summed read count for the gene that is higher than the actual number of reads mapping to it. As far as I can tell, 'geneCountTable' simply sums up the exon counts, and so its per-gene output for genes with spliced mapped reads with be artifically high.

    I'm wondering if Simon or the other authors of DEXSeq and DESeq (or anyone else) has any input on this?

    Thanks,
    Jeremy

  • #2
    Your analysis is correct. This is why we still have two script and recommend not using dexseq_count.py to produce input for DESeq. Maybe we should put a more explicit warning about this in the help page for 'geneCountTable' (or, better, simply remove this function; it was only an experimental one anyway that serves little purpose in DEXSeq).

    Comment


    • #3
      Okay, thanks for the reply. I will stick with generating separate count tables.

      Comment

      Latest Articles

      Collapse

      • seqadmin
        Addressing Off-Target Effects in CRISPR Technologies
        by seqadmin






        The first FDA-approved CRISPR-based therapy marked the transition of therapeutic gene editing from a dream to reality1. CRISPR technologies have streamlined gene editing, and CRISPR screens have become an important approach for identifying genes involved in disease processes2. This technique introduces targeted mutations across numerous genes, enabling large-scale identification of gene functions, interactions, and pathways3. Identifying the full range...
        08-27-2024, 04:44 AM
      • seqadmin
        Selecting and Optimizing mRNA Library Preparations
        by seqadmin



        Sequencing mRNA provides a snapshot of cellular activity, allowing researchers to study the dynamics of cellular processes, compare gene expression across different tissue types, and gain insights into the mechanisms of complex diseases. “mRNA’s central role in the dogma of molecular biology makes it a logical and relevant focus for transcriptomic studies,” stated Sebastian Aguilar Pierlé, Ph.D., Application Development Lead at Inorevia. “One of the major hurdles for...
        08-07-2024, 12:11 PM

      ad_right_rmr

      Collapse

      News

      Collapse

      Topics Statistics Last Post
      Started by seqadmin, 08-27-2024, 04:40 AM
      0 responses
      16 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, 08-22-2024, 05:00 AM
      0 responses
      293 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, 08-21-2024, 10:49 AM
      0 responses
      135 views
      0 likes
      Last Post seqadmin  
      Started by seqadmin, 08-19-2024, 05:12 AM
      0 responses
      124 views
      0 likes
      Last Post seqadmin  
      Working...
      X