Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression describing a linear time effect are considered. In order to find the optimal number and allocations of time points, for different priors, cost constraints and covariance structures of the random effects, a scalar function of the approximate information matrix based on the first order penalized quasi likelihood (PQL1) is optimized. To overcome the problem of dependence of Bayesian designs on the choice of prior distributions, maximin Bayesian D-optimal designs are proposed. The results show that the optimal number of time points depends on the subject-to-measurement cost ratio and increases with the cost ratio. Furthermore, maximin Bayesian D-o...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
Bayesian optimal designs for binary longitudinal responses analyzed with mixed logistic regression d...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
In medicine and health sciences mixed effects models are often used to study time-structured data. O...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
The Bayesian design approach accounts for uncertainty of the parameter values on which optimal desig...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...
In this article, the optimal selection and allocation of time points in repeated measures experiment...