Entering edit mode
Marie Sémon
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50
@marie-semon-5275
Last seen 10.2 years ago
Dear all,
We are using DESeq to analyse differential expression in a RNAseq
timecourse analysis (5 time points after treatment + control).
The dataset contains 3 replicates for the control, and single measures
for each time point. For each timepoint, we aim to extract
differentially
expressed genes relative to control.
We are wondering what is the best procedure to prepare this dataset
for
this analysis (steps of normalization + variance estimation):
1) is it better to start with normalizing + estimating dispersion on
the
whole dataset (5 points + 3 controls), and then to test for
differential
expression in
the two by two comparisons just mentionned
2) or is it better to normalize + estimate dispersion on restricted
datasets composed of 1 time-point + 3 controls, and then test for
differential expression between this time point and the controls.
It seems to us that the first procedure is better, because it may be
less sensitive to outliers. But we would be grateful to have your
enlightened input.
Thank you very much in advance,
Cheers,
Marie