[BioC] help with DESeq
Akula, Nirmala (NIH/NIMH) [C]
akulan at mail.nih.gov
Mon Dec 12 22:51:57 CET 2011
Thank you very much Simon for your response.
Nirmala
------------------------------------------------------------------------------------
Nirmala Akula, MS, PhD
Contractor,
Human Genetics Branch
NIMH/NIH
Blg 35, Rm 1A/205
Bethesda, MD - 20892
Phone# 301-451-4258
-----Original Message-----
From: Simon Anders [mailto:anders at embl.de]
Sent: Monday, December 12, 2011 4:26 PM
To: Akula, Nirmala (NIH/NIMH) [C]
Cc: bioconductor at r-project.org
Subject: Re: [BioC] help with DESeq
Dear Nirmala
On 2011-12-12 22:01, Akula, Nirmala (NIH/NIMH) [C] wrote:
>> nisc1Design
> Condition RIN Age Sex
> bipolar1 Bipolar 8.8 46 1
> bipolar2 Bipolar 6.0 48 1
> bipolar3 Bipolar 8.9 73 1
> bipolar4 Bipolar 8.0 56 2
> control1 Control 8.5 45 1
> control2 Control 8.6 57 1
> control3 Control 8.0 63 1
> control4 Control 8.1 39 2
> control5 Control 7.9 56 2
We only had factorial designs in mind when implementing DESeq's GLM
facility. It may be possible to tweak it to also accept quantitative
covariates but I am not convinced that this would have many applications.
I don't know what exactly you are aiming at in your analysis but hoping
that a covariate has a linear influence on your measured quantity (gene
expression, I presume) seems extremely optimistic in the case of age --
and for RIN, I have no idea why one should expect that.
By the way, if you encode sex with integers, the GLM fitter might
mistake this for a quantitative covariate as well. Better use letters to
be sure that it is treated as a factor.
Simon
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