[BioC] Experimental design for RNA-Seq
Naomi Altman
naomi at stat.psu.edu
Fri May 28 15:17:56 CEST 2010
At least from the stat theory point of view, the best design is equal
numbers of biological samples (the more the better) for each
condition and no technical reps.
So far, there is little indication that there are flowcell
effects. However, to be on the safe side, you should use the
blocking principle - as much as possible distribute the reps from the
different conditions across different flow cells (unless the whole
experiment fits on a single flow cell).
--Naomi
At 04:02 AM 5/28/2010, michael watson (IAH-C) wrote:
>Dear List
>
>I'm about to design a simple experiment (knockout vs wild-type) and
>we plan to use RNA-Seq. We're interested in gene expression, for
>mRNA and microRNAs in particular, and calculating stats for
>differential expression.
>
>I'm aware of DEseq, DEGseq and edgeR. I wanted to ask those who
>have a lot of experience of this type of analysis if they have any
>advice for experimental design, in particular, the number of
>replicates they have used and why (I was planning on going for all
>biological replicates, no technical).
>
>Thanks
>Mick
>
>
>
> [[alternative HTML version deleted]]
>
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Naomi S. Altman 814-865-3791 (voice)
Associate Professor
Dept. of Statistics 814-863-7114 (fax)
Penn State University 814-865-1348 (Statistics)
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