Is DESeq2 analysis valid for Metatranscriptomics?
0
0
Entering edit mode
4.3 years ago
Tom ▴ 540

I am relatively new to RNAseq and i don't yet fully understand the statistics involved in differential expression (DE) analysis. I have read quite a few publications where the DESeq2 package is used for DE-analysis of metatranscriptome datasets.

What confuses me in this context is the shrinkage estimation of dispersion. The DESeq2-Paper reads:

In DESeq2, we assume that genes of similar average expression strength have similar dispersion.

Is this a valid assumption for metatranscriptome-counts? An extreme example to illustrate the issue:

Organism A

-occurs with low abundance (average of 1 organisms per sample)
-has a high transcription rate of gene X (average of 1000 reads counts per organism in the sample)

Organism B

-occurs with high abundnace (average of 1000 organisms per sample)
-has a low transcription rate of gene y (average of 1 read count per organism in the sample

I would imagine gene x and gene y show a similar average read count of 1.000, but exhibit very different dispersions. Did i maybe miss something about how dispersion is calculated? Or does the issue perhaps not matter for real world datasets? Thanks in advance for any answers.

Cheers, Tom

RNA-Seq Metatranscriptomics deseq2 • 1.2k views
ADD COMMENT

Login before adding your answer.

Traffic: 956 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6