Let me be as clear as I can. It is not JMP that decides how analysis should proceed, it is the user. Many enumerative statisticians consider block effects to be random effects. I take a more analytical approach to understanding causal structure. When I have done due diligence to identify the noise, there is, IMHO, a more effective means of understanding the noise and the ramifications of noise. Yes, I would include block and all block-by-factor interactions in the saturated model for RCBD.
see: Doug Sanders, Mary G. Leitnaker & Robert A. McLean (2002) Randomized Complete Block Designs in Industrial Studies, Quality Engineering, 14:1, 1-8, DOI: 10.1081/QEN-100106880
Regarding your second paragraph, it is unlikely that you will be able to infer over ALL donors by sampling just two of them. You might have hypotheses regarding why donors would effect the response (e.g., age, underlying conditions, sex, genetics...). If you can select donors that would capture the extremes of the donor conditions (like bold level setting), you might be able to increase the inference space sufficiently to have the results of your study be useful in the future. However, if this is not possible, you will need to capture the donor-to-donor variation over a much larger sample.
The rule of thumb:
“Unfortunately, future experiments (future trials, tomorrow’s production) will be affected by environmental conditions (temperature, materials, people) different from those that affect this experiment…It is only by knowledge of the subject matter, possibly aided by further experiments (italics added) to cover a wider range of conditions, that one may decide, with a risk of being wrong, whether the environmental conditions of the future will be near enough the same as those of today to permit use of results in hand.”
Dr. Deming
"All models are wrong, some are useful" G.E.P. Box