[BioC] straight t vs. bonferroni vs. all the new stuff.
Sean Davis
sdavis2 at mail.nih.gov
Thu Oct 19 20:17:50 CEST 2006
Matthew Lyon wrote:
> Esteemed List:
>
> i need an alpha value for a t-test with about n=450,000 and a
> 1) df of 2
> 2) df of 4
>
> this is microarray data. i've been told bonferroni is too conservative for
> microarrays, hence interesting approaches like multtest, the q-value
> permuted one, etc...
>
> can anyone who deals in this area extensively (say, expression data) give me
> a ballpark value for t- or alpha- that's typically giving good 'oh man this
> is significantly different!' results ? i've got my own hunches but would
> like some blinded numbers tossed at me too.
>
Look at the p.adjust() function if you already have p-values computed by
a t-test as a place to start. Bonferroni should probably never be used,
as I think the Holm correction has the same assumptions but is less
conservative (you get something for nothing...). Some of the more
stats-minded folks might be able to ellaborate on that particular point,
but Holm is probably also too conservative.
Sean
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