I've been asked to analyze some data for an experiment that's already been done. 15 rats were raised in 5 groups of 3
- No treatment
- Saline treatment (control drug is delivered via saline)
- Drug treatment
- Saline shock (high dose)
- Drug shock (high dose)
Due to budget constraints, groups 2~5 were physically pooled (i.e. the three samples in each group were mixed and analyzed as a single sample) so as to fit onto a single iTRAQ 8-plex, whereas group 1 was not pooled so I have 8 channels
- No treatment
- No treatment
- No treatment
- Saline treatment (control drug is delivered via saline)
- Drug treatment
- Saline shock (high dose)
- Drug shock (high dose)
For those of you who don't know what iTRAQ is, it's a mass spectrometry protein identification and quantification method, which generates a list identified proteins and an 'absolute' quantification value. I say absolute, but it is meaningless in an absolute sense, and only useful when compared to another quantification value in the same experimental run. So for a given protein X I can calculate the ratio of X in channel 5 to the ratio of X in channel 1, or even the ratio of X in channel 5 to X in group 1 (average of channels 1,2 and 3)
$$X_5/(\sum_{n=1}^{3}X_n)/3$$
But what I want to know is if there are any statistical methods I can use to determine whether a given protein ($X_5$) is significantly different (in quantity) from ($X_{1,2,3}$).
Having only three samples with no treatment obviously means establishing any variance is probably meaningless, so I was thinking that some non-parametric rank based test might be the way to go? What is the best test for this setup?