Entering edit mode
Kevin Dawson
▴
80
@kevin-dawson-538
Last seen 10.2 years ago
Hi All,
I am wondering, which statistics is the most reliable, in your
experience,
in the following situation:
We're working on a human intervention study dataset with microarrays
from
16 patients before and after treatment, 32 samples altogether. Eight
of the
patients were treated with a drug and the other 8 were treated with
placebo.
The situation is, what we also saw in many other similar cases, that
the
patient-to-patient variance is much larger than the treatment effect.
As a
solution, we are experessing the RMA(after treatment)-RMA(before
treatment)
differences. The resulted 16 samples are analyzed with all the methods
in
mulltest plus the maxT/minP methods. None of these methods selected
any
genes at p<0.05. At the same time, t-test pointed out about 800
"significant" genes. Unfortunately, these 800 genes are not really the
ones
that are biologically plausible.
Q1: Do you have any arguments against the RMA(after)-RMA(before)
approach?
RMA is a logarithm, so the difference should express a fold change.
Q2: Do you have another method for similar situations when the
patient-to-patient variance is bigger than the treatment effect?
Q3: Seven tests say NO, is it really a NO? Should I conclude that the
treatment was ineffective?
Q4: Can you suggest another method that is more likely to find a
"real"
change in response to treatment.
Thank you in advance for your input. I feel that the basic quesion is
important in all human studies where multiple samples come from the
same
patient. We need a method to control for the patient-to-patient
variance.
Statistical and philosphical ideas are all welcome.
Thank you,
Kevin