Abstract
Background: To fulfill the model based drug development, the very first step is usually a model establishment from published literatures. Pharmacokinetics model is the central piece of model based drug development. This paper proposed an important approach to transform published non-compartment model pharmacokinetics (PK) parameters into compartment model PK parameters. This meta-analysis was performed with a multivariate nonlinear mixed model. A conditional first-order linearization approach was developed for statistical estimation and inference.Results: Using MDZ as an example, we showed that this approach successfully transformed 6 non-compartment model PK parameters from 10 publications into 5 compartment model PK parameters. In simulation studies, we showed that this multivariate nonlinear mixed model had little relative bias (<1%) in estimating compartment model PK parameters if all non-compartment PK parameters were reported in every study. If there missing non-compartment PK parameters existed in some published literatures, the relative bias of compartment model PK parameter was still small (<3%). The 95% coverage probabilities of these PK parameter estimates were above 85%.Conclusions: This non-compartment model PK parameter transformation into compartment model meta-analysis approach possesses valid statistical inference. It can be routinely used for model based drug development. © 2010 Li et al; licensee BioMed Central Ltd.
Cite
CITATION STYLE
Wang, Z., Kim, S., Quinney, S. K., Zhou, J., & Li, L. (2010). Non-compartment model to compartment model pharmacokinetics transformation meta-analysis - a multivariate nonlinear mixed model. BMC Systems Biology, 4(SUPPL. 1). https://doi.org/10.1186/1752-0509-4-S1-S8
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.