[BioC] Regression using LIMMA
Naomi Altman
naomi at stat.psu.edu
Wed Nov 10 07:18:37 CET 2010
Without the model it is hard to say, but I am guessing you fitted a
straight line for each gene. So the intercept is the intercept of
the line, and the coefficient for dose is the slope. The t-stat is
the test of whether the intercept and slope are equal zero. The
intercept is not interesting for your purpose. The slope tells you
if there is a statistically significant dose effect.
Regards,
Naomi
At 07:17 PM 11/9/2010, somnath bandyopadhyay wrote:
>Hi there,
>I am trying to use LIMMA to analyze gene expression data from an
>experiment which has dose response but only one replicate at each
>dose. I tried to fit a linear model using lmfit(). I used the doses
>as continuous variable. I do the ebayes fit and finally do decide
>tests with adj p values (BH corrected). I get coefficients,
>intercept and dose as output with t-stat and p values for each. I
>was wondering how to interpret these. What does intercept, dose and
>coefficients mean in this case? The data matrix I read into R was
>Affy Plus2 chip data for 4 doses of a compound. Any help would be
>greatly appreciated.
>Best Regards,Som.
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