Seqanswers Leaderboard Ad

Collapse

Announcement

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

  • DESeq2: model design in rna seq - person variability

    I have 8 samples that correspond to 4 persons measured in two times, 0h and 20h.
    names_chip person time Dample
    1 IonCode_0109 A1 0 Donor 1- Day 0
    2 IonCode_0110 A1 20 Donor 1- Day 20
    3 IonCode_0111 A2 0 Donor 2- Day 0
    4 IonCode_0112 A2 20 Donor 2- Day 20
    5 IonCode_0113 A3 0 Donor 3- Day 0
    6 IonCode_0114 A3 20 Donor 3- Day 20
    7 IonCode_0115 A4 0 Donor 4- Day 0
    8 IonCode_0116 A4 20 Donor 4- Day 20

    The researchers would to see what genes are DE between the two timepoints. They hope there are many changes.
    The service of genomic send me the rowdata counts with 20812 genes. I follow the pipelines of deseq2 library.

    dds <- DESeqDataSetFromMatrix(countData = counts,
    colData = annotation,
    design = ~ time+person)

    I have made pca plots and clustering of normalizated counts and i can see that the samples of the same person are closely to each other, but between persons are very separated.I could hope this. I attach pca plot.

    At the moment i don't filter by number of counts. I do

    dds.parametric.wald<-DESeq(dds)
    contrast_oe <- c("time","0","20")
    res.parametric.wald <- results(dds.parametric.wald,contrast=contrast_oe,independentFiltering = T)
    summary(res.parametric.wald)

    and the follow result

    out of 17633 with nonzero total read count
    adjusted p-value < 0.1
    LFC > 0 (up) : 6, 0.034%
    LFC < 0 (down) : 14, 0.079%
    outliers [1] : 0, 0%
    low counts [2] : 2706, 15%
    (mean count < 1)
    [1] see 'cooksCutoff' argument of ?results
    [2] see 'independentFiltering' argument of ?results

    Oh! Only 20 DEG!!
    I attach the polot of dispersions. I think that it's ok! Any suggestion???

    If I study the contrasts between persons (e.g)

    res.parametric.wald.a1.a2 <- results(dds.parametric.wald,contrast=c("subject","A1","A2"),independentFiltering = T)
    summary(res.parametric.wald.a1.a2)

    I get
    out of 17633 with nonzero total read count
    adjusted p-value < 0.1
    LFC > 0 (up) : 4194, 24%
    LFC < 0 (down) : 3317, 19%
    outliers [1] : 0, 0%
    low counts [2] : 4064, 23%
    (mean count < 2)
    [1] see 'cooksCutoff' argument of ?results
    [2] see 'independentFiltering' argument of ?results


    Is it possible when i contrast between timepoints there are some background noise by the variability of the persons, and thus got reduce the number of DEG?
    With the goal of increase the number of genes DE between timepoints, would it be correct select the genes that are not DE between persons, and only with this genes compare between timepoints??
    Methodologically and statistically is correct?? Any suggestion/way/design to increase the number of DEG between timepoints?
    Attached Files

Latest Articles

Collapse

  • 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 on Modified Bases...
    Yesterday, 07:01 AM
  • seqadmin
    Current Approaches to Protein Sequencing
    by seqadmin


    Proteins are often described as the workhorses of the cell, and identifying their sequences is key to understanding their role in biological processes and disease. Currently, the most common technique used to determine protein sequences is mass spectrometry. While still a valuable tool, mass spectrometry faces several limitations and requires a highly experienced scientist familiar with the equipment to operate it. Additionally, other proteomic methods, like affinity assays, are constrained...
    04-04-2024, 04:25 PM

ad_right_rmr

Collapse

News

Collapse

Topics Statistics Last Post
Started by seqadmin, 04-11-2024, 12:08 PM
0 responses
55 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-10-2024, 10:19 PM
0 responses
51 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-10-2024, 09:21 AM
0 responses
45 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-04-2024, 09:00 AM
0 responses
55 views
0 likes
Last Post seqadmin  
Working...
X