We consider the problem of constructing optimal designs for population pharmacokinetics which use random effect models. It is common practice in the design of experiments in such studies to assume uncorrelated errors for each subject. In the present paper a new approach is introduced to determine efficient designs for nonlinear least squares estimation which addresses the problem of correlation between observations corresponding to the same subject. We use asymptotic arguments to derive optimal design densities, and the designs for finite sample sizes are constructed from the quantiles of the corresponding optimal distribution function. It is demonstrated that compared to the optimal exact designs, whose determination is a hard numerical pr...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
We consider the problem of optimal design of experiments for random effects models, especially popul...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
Optimal designs for random effect models with correlated errors with applications in population phar...
We consider the problem of optimal design of experiments for random-effects models, especially popul...
An approach is proposed to optimal design of experiments for estimating random-effects regression mo...
We describe an algorithm for the construction of optimum experimental designs for the parameters in ...
We consider the problem of construction of optimal experimental designs for linear regression models...
In the common linear and quadratic regression model with an autoregressive error structure exact $D$...
We consider the problem of designing experiments for regression in the presence of correlated observ...
The efficient design of experiments for comparing a control with v new treatments when the data are ...
Random effects models are widely used in population pharmacokinetics and dose finding studies. In ...
Graduation date: 1984The two major objectives of this thesis are: (1) demonstrating and\ud applying ...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
We consider the problem of optimal design of experiments for random effects models, especially popul...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
Optimal designs for random effect models with correlated errors with applications in population phar...
We consider the problem of optimal design of experiments for random-effects models, especially popul...
An approach is proposed to optimal design of experiments for estimating random-effects regression mo...
We describe an algorithm for the construction of optimum experimental designs for the parameters in ...
We consider the problem of construction of optimal experimental designs for linear regression models...
In the common linear and quadratic regression model with an autoregressive error structure exact $D$...
We consider the problem of designing experiments for regression in the presence of correlated observ...
The efficient design of experiments for comparing a control with v new treatments when the data are ...
Random effects models are widely used in population pharmacokinetics and dose finding studies. In ...
Graduation date: 1984The two major objectives of this thesis are: (1) demonstrating and\ud applying ...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
We consider the problem of optimal design of experiments for random effects models, especially popul...
This paper discusses the problem of determining optimal designs for regression models, when the obse...