I am trying to optimise an assay for robustness and so I would like to use the prediction profiler to model variability in my factors. I would like to model the factors as continuous variables and have the option to use a normal distribution.
However, when designing the DoE using custom design I wanted to set the factors to discrete numeric (rather than continuous) so that I could set the factor values to test. This is because one of the factors is concentration of a drug and setting the factors to continuous generates runs that set the values of the concentration to harder values generate (for example setting the concentration factor to continous generates runs with values of 72nM. My stock solution is 128nM so a value of 64nM would be much easier to test and would explore a similar place in the design space).
I, therefore, designed the DoE using discrete numeric variables and then when analysing the data changed the values to continuous.
However, when I come to the prediction profiler in JMP17, when I select Random - it gives me the 5 different levels that I used when creating the discrete numeric variables associated probabilities to set rather than a normal distribution.
What can I do to be able to model the variation in the factors as a normal distribution in order to optimise for robustness?