4.7 Article

A methodology to D-augment experimental designs

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ELSEVIER
DOI: 10.1016/j.chemolab.2023.104822

Keywords

D-augmented design; Design efficiency; Design augmentation; Generalised variance function; General Equivalence Theorem

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One of the main criticisms of optimal experimental designs is their lack of practicality. This paper proposes a method based on the General Equivalence Theorem to augment designs and meet practical needs with a user-specified minimum efficiency requirement. The usefulness of this theory-based method is demonstrated in various setups using statistical models, and the power of the lack-of-fit test is explored in a simulation study for different augmented designs. User-friendly codes are provided to facilitate implementation of the methodology.
One of the main criticisms of optimal experimental designs is that they tend not to adequately meet the practical needs of the experimenter. For example, optimal designs for estimation of the parameters in a model frequently have too few designs points to check the model adequacy, to discriminate between rival models or to estimate a particular function of the parameters. Further, some experimenters like toxicologists have been schooled to using many doses in an animal experiment and there is great resistance to using a design with just a few doses. This paper uses the General Equivalence Theorem to define regions where the practitioner may select points flexibly to augment a design that meets the practical needs more adequately and has a user-specified minimum efficiency requirement. As examples, we demonstrate the usefulness of our theory-based method in various setups using statistical models, such as Antoine's Equation, the Michaelis-Menten model and a quadratic heteroscedastic model. We also explore the power of the lack-of-fit test for several D-augmented designs in a simulation study. We provide user-friendly codes, either through the R package optedr or through a graphical user interface in Shiny, to facilitate practitioners implement our methodology to find an improved D-augmented designs for their problems.

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