Hi @SaraA,
Glad that these first suggestions might work for you.
If you plan to create a Definitive Screening Design for 9 continuous factors, the recommended "default" run size is 25, which is very economical compared to your allowed experimental budget. But you can still add more runs to enable higher precision in the estimation of coefficients, and/or allow an easier detection of quadratic effects, and compare the benefits of adding more runs in your design with the platform Compare Designs.
The DSD is a very interesting option when/if possible, as it allows precise main effects estimation (main effects are completely unbiased, not correlated with any 2-factors interactions or quadratic effects), and they can also identify factors having a nonlinear effect on the response (since 3 levels are used for each factor). There are a lot of other benefits compared to classical screening designs listed here : Overview of Definitive Screening Designs
You can also use Blocking with DSD, for example if you want to take into consideration random variability from different plates used, so this makes DSDs a very efficient screening design choice.
Even if DSDs have very interesting design properties, I would probably not stop at this stage, as there are several ways you might need more information (and you have an allowed experimental budget that allows more in-depth study of the factors):
- Perhaps you may have to refine the factors ranges, in order to focus on a narrower experimental space of interest ?
- DSDs are still screening designs, so once main effects are identified with high confidence, you may want to confirm other effects that might have been detected during this first screening stage (2-factors interactions, quadratic effects) ?
- Finally, in the case of a predictive model, it might be interesting to add validation runs and/or other "training" runs (perhaps in a Space-Filling way), so that you can confirm and/or refine your model ?
It all depends on your objectives, requirements and experimental budget/constraints, and which precision you may need to reach a certain understanding of the system.
I hope this complementary answer will help you,
Victor GUILLER
L'Oréal Data & Analytics
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)