Optimal designs for discriminating between dose-response models in toxicology studies
Dette, Holger ; Pepelyshev, Andrey ; Shpilev, Piter ; Wong, Weng Kee
Bernoulli, Tome 16 (2010) no. 1, p. 1164-1176 / Harvested from Project Euclid
We consider design issues for toxicology studies when we have a continuous response and the true mean response is only known to be a member of a class of nested models. This class of non-linear models was proposed by toxicologists who were concerned only with estimation problems. We develop robust and efficient designs for model discrimination and for estimating parameters in the selected model at the same time. In particular, we propose designs that maximize the minimum of D- or D1-efficiencies over all models in the given class. We show that our optimal designs are efficient for determining an appropriate model from the postulated class, quite efficient for estimating model parameters in the identified model and also robust with respect to model misspecification. To facilitate the use of optimal design ideas in practice, we have also constructed a website that freely enables practitioners to generate a variety of optimal designs for a range of models and also enables them to evaluate the efficiency of any design.
Publié le : 2010-11-15
Classification:  continuous design,  locally optimal design,  maximin optimal design,  model discrimination,  robust design
@article{1290092900,
     author = {Dette, Holger and Pepelyshev, Andrey and Shpilev, Piter and Wong, Weng Kee},
     title = {Optimal designs for discriminating between dose-response models in toxicology studies},
     journal = {Bernoulli},
     volume = {16},
     number = {1},
     year = {2010},
     pages = { 1164-1176},
     language = {en},
     url = {http://dml.mathdoc.fr/item/1290092900}
}
Dette, Holger; Pepelyshev, Andrey; Shpilev, Piter; Wong, Weng Kee. Optimal designs for discriminating between dose-response models in toxicology studies. Bernoulli, Tome 16 (2010) no. 1, pp.  1164-1176. http://gdmltest.u-ga.fr/item/1290092900/