We are using DESeq to find differentially expressed genes for RNAseq experiment with two biological replicates. When we did the analyses considering them as biological replicates, we found that among differential expressed genes, there was a very high number of counts in one biorep compared to the others. Then we took biorep1 from experimental group and compared with biorep1 of the control group and there were only 3 genes differentially expressed at padj 0.05. However, there are lot of genes with thousands reads vs 0 in the two groups. Then we did the same with the second biorep and we found about 100 differentially expressed genes. Does anyone know why this is happening?
Header Leaderboard Ad
Collapse
RNAseq analysis using DESeq
Collapse
Announcement
Collapse
No announcement yet.
X
-
Hi Simon,
Here is an example (attached txt file) for the genes that showed differential expression, but between the same experimental group variation was very high. Please let me if it is still not clear. I will try to explain again.Attached Files
Comment
-
Originally posted by Simon Anders View PostI'm not sure I understand your question. Could you give an example, please?
I have quite similar problem for the significant genes detected by DESeq and edgeR. Both of them output some significant candidates which have quite large variation within groups. Such as:
wt1: 2
wt2: 345
treat1: 3
treat2:1
or
wt1: 0
wt2: 345
treat1: 0
treat2: 0
Is it normal to get low p value for such kind of expression pattern? Thanks
Comment
-
Short answer: Please try again with the 'deve' version of DESeq (version 1.5.19), and this oddity should vanish.
Long answer: In the current release version of DESeq (version 1.4.1), we estimate a variance for each gene, fit a line through the mean-variance plot, and then use the fitted value of the variance, i.e., the value typical for a gene of the same expression strength. The 'nbinomTest' function gives you, besides the p values, two columns with the "variance residuals", i.e., the ratio of the gene's variance estimate over the fitted value. Cases such as your should show up as having a large value there and the vignette advises to disregard such hits in the downstream analysis.
Nobody ever read this sentence in the vignette, and also, the solution was rather unsatisfactory anyway, and so we have now changed this. Now, we do not use anymore always the fitted value, but instead the maximum of the per-gene estimate and the fitted value. This avoids artifacts like the ones you see. Have a look at the help page for 'estimateDispersion' in the new version, and also at the vignette, which we have extensively overhauled.
Comment
-
Originally posted by Simon Anders View PostShort answer: Please try again with the 'deve' version of DESeq (version 1.5.19), and this oddity should vanish.
Long answer: In the current release version of DESeq (version 1.4.1), we estimate a variance for each gene, fit a line through the mean-variance plot, and then use the fitted value of the variance, i.e., the value typical for a gene of the same expression strength. The 'nbinomTest' function gives you, besides the p values, two columns with the "variance residuals", i.e., the ratio of the gene's variance estimate over the fitted value. Cases such as your should show up as having a large value there and the vignette advises to disregard such hits in the downstream analysis.
Nobody ever read this sentence in the vignette, and also, the solution was rather unsatisfactory anyway, and so we have now changed this. Now, we do not use anymore always the fitted value, but instead the maximum of the per-gene estimate and the fitted value. This avoids artifacts like the ones you see. Have a look at the help page for 'estimateDispersion' in the new version, and also at the vignette, which we have extensively overhauled.
Thanks for your quick reply. One more question about installation of the devel DESeq.
I have downloaded the newest version of Biobase from bioconductor, but DESeq require even advanced version.(http://www.bioconductor.org/packages...l/Biobase.html )
Do you know where to download >=2.13.6 Biobase? Thanks.
"
Error : package 'Biobase' 2.12.2 was found, but >= 2.13.6 is required by 'DESeq'
"
Comment
-
Originally posted by Gangcai View PostHi Simon,
Thanks for your quick reply. One more question about installation of the devel DESeq.
I have downloaded the newest version of Biobase from bioconductor, but DESeq require even advanced version.(http://www.bioconductor.org/packages...l/Biobase.html )
Do you know where to download >=2.13.6 Biobase? Thanks.
"
Error : package 'Biobase' 2.12.2 was found, but >= 2.13.6 is required by 'DESeq'
"
Comment
-
At http://www.bioconductor.org/packages...l/Biobase.html
However, installing a 'devel' version of Biobase over a 're'ease' installtion of Bioconductor might cause chaos. Better install the devel version of R and then, 'bioclite' will pull 'devel' versions of all Bioc packages.
Comment
-
Hi Simon,
I have tried the deve version of DESeq. The number of significant genes drop quite a lot. It does look better comparing with previous result. But still have some genes have high variation within biological repilcates.
wt1 wt2 treat1 treat2 pvalue_adjusted
928 0 0 0 <<0.01
0 135 0 0 <<0.01
Comment
-
Could you please try again with
Code:cds <- estimateDispersions( cds, method="pooled" )
Comment
Latest Articles
Collapse
-
Differential Expression and Data Visualization: Recommended Tools for Next-Level Sequencing Analysisby seqadmin
After covering QC and alignment tools in the first segment and variant analysis and genome assembly in the second segment, we’re wrapping up with a discussion about tools for differential gene expression analysis and data visualization. In this article, we include recommendations from the following experts: Dr. Mark Ziemann, Senior Lecturer in Biotechnology and Bioinformatics, Deakin University; Dr. Medhat Mahmoud Postdoctoral Research Fellow at Baylor College of Medicine;...-
Channel: Articles
05-23-2023, 12:26 PM -
-
by seqadmin
Continuing from our previous article, we share variant analysis and genome assembly tools recommended by our experts Dr. Medhat Mahmoud, Postdoctoral Research Fellow at Baylor College of Medicine, and Dr. Ming "Tommy" Tang, Director of Computational Biology at Immunitas and author of From Cell Line to Command Line.
Variant detection and analysis tools
Mahmoud classifies variant detection work into two main groups: short variants (<50...-
Channel: Articles
05-19-2023, 10:03 AM -
-
by seqadmin
With new tools and computational resources being released regularly, it can be hard to determine which are best suited for the analysis process and which older tools continue to be maintained. In an effort to assist the sequencing community, we interviewed three highly skilled bioinformaticians about their recommended tools for several important analysis applications.
Quality control and preprocessing tools
“Garbage in, garbage out” is a popular...-
Channel: Articles
05-16-2023, 10:11 AM -
ad_right_rmr
Collapse
News
Collapse
Topics | Statistics | Last Post | ||
---|---|---|---|---|
Exploring French-Canadian Ancestry: Insights into Migration, Settlement Patterns, and Genetic Structure
by seqadmin
Started by seqadmin, Yesterday, 09:22 AM
|
0 responses
8 views
0 likes
|
Last Post
by seqadmin
Yesterday, 09:22 AM
|
||
Started by seqadmin, 05-24-2023, 09:49 AM
|
0 responses
9 views
0 likes
|
Last Post
by seqadmin
05-24-2023, 09:49 AM
|
||
Introducing ProtVar: A Web Tool for Contextualizing and Interpreting Human Missense Variation in Proteins
by seqadmin
Started by seqadmin, 05-23-2023, 07:14 AM
|
0 responses
27 views
0 likes
|
Last Post
by seqadmin
05-23-2023, 07:14 AM
|
||
Started by seqadmin, 05-18-2023, 11:36 AM
|
0 responses
113 views
0 likes
|
Last Post
by seqadmin
05-18-2023, 11:36 AM
|
Comment