With the increasing popularity of optimal design in drug development it is important to understand how the approximations and implementations of the Fisher information matrix (FIM) affect the resulting optimal designs. The aim of this work was to investigate the impact on design performance when using two common approximations to the population model and the full or block-diagonal FIM implementations for optimization of sampling points. Sampling schedules for two example experiments based on population models were optimized using the FO and FOCE approximations and the full and block-diagonal FIM implementations. The number of support points was compared between the designs for each example experiment. The performance of these designs based ...
International audienceBackground and objective: Nonlinear mixed-effect models (NLMEMs) are increasin...
We extend the methodology for designs evaluation and optimization in nonlinear mixed effects models ...
The identification of a model structure, i.e., the relationship of model components, and the usually...
With the increasing popularity of optimal design in drug development it is important to understand h...
The costs of developing new pharmaceuticals have increased dramatically during the past decades. Con...
In population pharmacokinetic studies, the precision of parameter estimates is dependent on the popu...
International audienceWe focus on the Fisher information matrix used for design evaluation and optim...
The selection of optimal designs for generalized linear mixed models is complicated by the fact that...
Inter occasion variability (IOV) is of importance to consider in the development of a design where i...
Alphabetical optimal designs are found by minimising a scalar function of the inverseFisher informat...
An approach is proposed to optimal design of experiments for estimating random-effects regression mo...
We discuss optimal experimental design issues for nonlinear models arising in dose response studies....
This paper is concerned with the statistical properties of experimental designs where the factor lev...
This paper presents D-optimal experimental designs for a variety of non-linear models which depend o...
International audienceNonlinear mixed effect models (NLMEMs) are widely used for the analysis of lon...
International audienceBackground and objective: Nonlinear mixed-effect models (NLMEMs) are increasin...
We extend the methodology for designs evaluation and optimization in nonlinear mixed effects models ...
The identification of a model structure, i.e., the relationship of model components, and the usually...
With the increasing popularity of optimal design in drug development it is important to understand h...
The costs of developing new pharmaceuticals have increased dramatically during the past decades. Con...
In population pharmacokinetic studies, the precision of parameter estimates is dependent on the popu...
International audienceWe focus on the Fisher information matrix used for design evaluation and optim...
The selection of optimal designs for generalized linear mixed models is complicated by the fact that...
Inter occasion variability (IOV) is of importance to consider in the development of a design where i...
Alphabetical optimal designs are found by minimising a scalar function of the inverseFisher informat...
An approach is proposed to optimal design of experiments for estimating random-effects regression mo...
We discuss optimal experimental design issues for nonlinear models arising in dose response studies....
This paper is concerned with the statistical properties of experimental designs where the factor lev...
This paper presents D-optimal experimental designs for a variety of non-linear models which depend o...
International audienceNonlinear mixed effect models (NLMEMs) are widely used for the analysis of lon...
International audienceBackground and objective: Nonlinear mixed-effect models (NLMEMs) are increasin...
We extend the methodology for designs evaluation and optimization in nonlinear mixed effects models ...
The identification of a model structure, i.e., the relationship of model components, and the usually...