Seqanswers Leaderboard Ad

Collapse

Announcement

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

  • Too many DEG with edgeR output?

    Hi there,

    I'm dealing with bacterial RNA-seq analysis. My experiment is very simple. Two samples to compare and no replicates. Reads were generated with Ion Torrent PGM using 316 chip. One for each sample and performed in different days.

    Since I had too many differentially expressed genes, ¿Should I be more conservative assigning edgeR dispersion value? Also, there are considerable more up-regulated genes in *exvivo* than in plate sample.

    See logFC_vs_logCPM figure:



    Thanks for you help, Bernardo



    - tmap code:

    tmap map2 -f HPNK_clean.fsa -r exvivo.fastq -i fastq -s exvivo.sam --verbose

    tmap map2 -f HPNK_clean.fsa -r plate.fastq -i fastq -s plate.sam --verbose

    - Flasgstat:

    exvivo:

    >3240242 + 0 in total (QC-passed reads + QC-failed reads)


    >2132481 + 0 mapped (65.81%:nan%)

    plate:

    >3774075 + 0 in total (QC-passed reads + QC-failed reads)


    >3510438 + 0 mapped (93.01%:nan%)


    - count:

    python -m HTSeq.scripts.count -m intersection-nonempty -t CDS -i ID exvivo.sam HPNK.gff > exvivo.counts

    python -m HTSeq.scripts.count -m intersection-nonempty -t CDS -i ID plate.sam HPNK.gff > plate.counts


    - count stats:

    ex-vivo stats

    >no_feature 777946

    >ambiguous 1

    >too_low_aQual 0

    >not_aligned 1107761

    >alignment_not_unique 0

    plate stats

    >no_feature 776707

    >ambiguous 47

    >too_low_aQual 0

    >not_aligned 263637

    >alignment_not_unique 0

    - edgeR code:

    library(edgeR)

    files <- dir(pattern="*\\.counts$")

    RG <- readDGE(files, header=FALSE)

    RG

    keep <- rowSums(cpm(RG)>1) >= 2 #we keep genes that achieve at least one count per million (cpm) in at least three samples

    RG <- RG[keep,]

    dim(RG)


    RG <- calcNormFactors(RG)

    RG$samples


    plotMDS(RG)


    bcv <- 0.2 #Assigned dispersion value of 0.2

    m <- as.matrix(RG)

    d <- DGEList(counts=m, group=(1:2)) #modify 'group' depending on sample number. Also can be adapted to replicated samples, see'?DGEList'.

    d

    et <- exactTest(d, pair=(1:2),dispersion=bcv^2) #exactTest(RG, pair=(1:2),dispersion=bcv^2)

    et

    top <- topTags(et)

    top

    cpm(RG)[rownames(top), ] #Check the individual cpm values for the top genes:

    summary(de <- decideTestsDGE(et)) #The total number of DE genes at 5% FDR is given by'decideTestsDGE'.


    [,1]

    -1 200

    0 1176

    1 769

    Of the 'number' tags identified as DE, 769 are up-regulated ex-vivo and 200 are down-regulated.

    detags <- rownames(RG)[as.logical(de)] #detags contains the DE genes at 5% FDR

    plotSmear(et, de.tags=detags) #plot all genes and highlight DE genes at 5% FDR

    abline(h=c(-1, 1), col="blue") #The blue lines indicate 2-fold changes.

    title("plate vs ex-vivo")

    dev.copy2pdf(file = "Figure_1.pdf") #Save as .pdf##

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...
    Today, 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
37 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-10-2024, 10:19 PM
0 responses
41 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-10-2024, 09:21 AM
0 responses
35 views
0 likes
Last Post seqadmin  
Started by seqadmin, 04-04-2024, 09:00 AM
0 responses
54 views
0 likes
Last Post seqadmin  
Working...
X