Entering edit mode
zhengyu jiang
▴
50
@zhengyu-jiang-5661
Last seen 10.2 years ago
Dear Bioconductor experts,
We have data from a homemade one-channel microarray that I tried to
apply
limma for differential expression analysis between matched paired
Normal
(N) and Tumor (Tumor) samples - 8 biological replicates (one tech
replicate
has been averaged after normalization). All samples are formatted in
one
matrix (M).
Signals have been quantile normalized between each paired normal and
tumor.
Signal values below 5 (log scale) have been replaced by "NA" since
they are
potentially noises. So there are many NAs in M.
I followed the user manual and made the codes below.
I think the code is correct? My questions are (1) how to deal with NAs
- as
I did a search but no clear idea (2) how do people do the statistics
at the
gene level for one gene having multiple probes - averaging or taking
median?
Thanks,
Zhengyu
> head(M)
N1 N2 N3 N4 N5 N6 N7
N8 T1 T2 T3
2 8.622724 7.423568 NA NA 7.487174 NA 8.516293
NA
7.876259 7.856707 NA
T4 T5 T6 T7 T8
2 NA 7.720018 NA 7.752550 NA
> eset<-as.matrix(M)
> Pair=factor(targets$Pair)
> Treat=factor(targets$Treatment,levels=c("N","T")) # compared
matched
normal to tumors
> design<-model.matrix(~Pair+Treat)
> targets
FilenName Pair Treatment
1 N1 1 N
2 N2 2 N
3 N3 3 N
4 N4 4 N
5 N5 5 N
6 N6 6 N
7 N7 7 N
8 N8 8 N
9 T1 1 T
10 T2 2 T
11 T3 3 T
12 T4 4 T
13 T5 5 T
14 T6 6 T
15 T7 7 T
16 T8 8 T
fit_pair<-lmFit(eset,design)
fit_pair<-eBayes(fit_pair)
R=topTable(fit_pair, coef="TreatT", adjust="BH",number=30) # display
top 30
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