OPTIMAL DESIGNS FOR DOSE RESPONSE CURVES WITH COMMON PARAMETERS

Citation
Chrystel Feller et al., OPTIMAL DESIGNS FOR DOSE RESPONSE CURVES WITH COMMON PARAMETERS, Annals of statistics , 45(5), 2017, pp. 2102-2132
Journal title
ISSN journal
00905364
Volume
45
Issue
5
Year of publication
2017
Pages
2102 - 2132
Database
ACNP
SICI code
Abstract
A common problem in Phase II clinical trials is the comparison of dose response curves corresponding to different treatment groups. If the effect of the dose level is described by parametric regression models and the treatments differ in the administration frequency (but not in the sort of drug), a reasonable assumption is that the regression models for the different treatments share common parameters. This paper develops optimal design theory for the comparison of different regression models with common parameters. We derive upper bounds on the number of support points of admissible designs, and explicit expressions for D-optimal designs are derived for frequently used dose response models with a common location parameter. If the location and scale parameter in the different models coincide, minimally supported designs are determined and sufficient conditions for their optimality in the class of all designs derived. The results are illustrated in a dose-finding study comparing monthly and weekly administration.