Entering edit mode
Susanne Franssen
▴
30
@susanne-franssen-4994
Last seen 10.3 years ago
Dear all,
1) GLM & residuals:
I have a question concerning the use of GLMs in edgeR and the analysis
of the residuals after model fitting.
I have followed all the steps until model fitting, e.g.:
glmfit.D <- glmFit(D, design, dispersion = D$tagwise.dispersion)
The results I obtain from the fitting are the following catgories:
> names(glmfit.D)
[1] "coefficients" "fitted.values" "fail" "not.converged"
[5] "deviance" "df.residual" "abundance" "design"
[9] "offset" "dispersion" "method" "counts"
[13] "samples"
What would be the best way to obtain the residuals for the "genewise"
GLMs?
2) model fitting & hypothesis testing:
I have a fully crossed design with 2 factors and 2 factor levels each:
individual <- as.factor(c("indA","indA","indB","indB"))
treatment <- as.factor(c("treat1","treat2","treat1","treat2"))
in general I would be interested in 3 different aspects:
a) effect of individual
b) effect of treatment
c) interaction between individual and treatment
What would be the best way to test for those effects, would I rather
test for all three aspects individually, i.e.:
a) design <- model.matrix(~individual)
b) design <- model.matrix(~treatment)
c) design <- model.matrix(~individual*treatment)
or doesn't it also make sense to model
design <- model.matrix(~individual+treatment)
and test for
a) lrt.cd_ind <- glmLRT(D, glmfit.D, coef=2)
b) lrt.cd_treat <- glmLRT(D, glmfit.D, coef=3)
... this way the effect of both factors could be accounted for in the
model?!
Thanks a lot!
Susanne