Welcome to the community.
Adding to Phil's questions:
1. Have you studied the measurement system?
2. How do you KNOW the 7 proteins have a significant effect? How were they studied and under what inference space (what was the noise (e.g., starting material) doing when they were studied?)
3. How do you know it is non-linear vs. this is an hypothesis you have and want to study?
4. If you know starting material has a huge effect, how do you want to handle this in the future? For example, do you want you become robust to it? Do you want to adjust your process to compensate? Do you want to work on improving the starting material?
As Phil suggests, there are many things to contemplate and consider before selecting the appropriate design. AND the likelihood of you choosing the exactly correct design is near 0 (even for very experienced designers). "the best design you'll ever design is the one you design after you run the experiment". So think sequential. The first experiment will provide information to design a better experiment. At any point in your iterations, create multiple designs (easy to do in JMP). Evaluate what knowledge each design may provide vs. the cost to run it. Anticipate every possible outcome for each and then select one, get data, analyze and iterate.
"All models are wrong, some are useful" G.E.P. Box