Optimal sampling times for pharmacokinetic experiments |
| |
Authors: | David Z. D'Argenio |
| |
Affiliation: | (1) Department of Biomedical Engineering and the Laboratory of Applied Pharmacokinetics, University of Southern California, 90007 Los Angeles, California |
| |
Abstract: | A sequential estimation procedure is presented which uses optimal sampling times to estimate the parameters of a model from data obtained from a group of subjects. This optimal sampling sequential estimation procedure utilizes parameter estimates from previous subjects in the group to determine the optimal sampling times for the next subject. Parameter estimates obtained from the optimal sampling procedure are compared to those obtained from a conventional sampling scheme by using Monte Carlo simulations which include noise terms for both assay error and intersubject variability. The results of these numerical experiments, for the two examples considered here, show that the parameter estimates obtained from data collected at optimal sampling times have significantly less variability than those generated using the conventional sampling procedure. We conclude that optimal sampling and preexperiment simulation may be useful tools for designing informative pharmacokinetic experiments.Presented at the First Annual Conference of the American College of Clinical Pharmacy, Boston, July 1980. |
| |
Keywords: | optimal sampling experiment design parameter estimation Monte Carlo simulation numerical experiments intersubject variability |
本文献已被 SpringerLink 等数据库收录! |
|