I apologize, I don't have time right now to enter your data into JMP and take a look, but, in general, you seem to have either a Block effect or a Block-by-factor interaction effect. Where you would want to investigate is: Why are the results different between weeks? Make sure the differences first pass the sensibility test. That is, does the data vary enough for further analysis. Is there enough variation in the Y's to be of practical importance? Then, proceed with analysis of a Block design (this varies depending on whether you consider the Block effects to be random or fixed).
Blocks as used to partition the noise in an experiment. The method is quite useful as you can reap the benefits of both increasing the inference space of your experiment without compromising precision (and, in some cases, assess the robustness of your model).
"All models are wrong, some are useful" G.E.P. Box