Journal article

Statistical power calculations for mixed pharmacokinetic study designs using a population approach

F Kloprogge, JA Simpson, NPJ Day, NJ White, J Tarning

AAPS Journal | SPRINGER | Published : 2014

Abstract

Simultaneous modelling of dense and sparse pharmacokinetic data is possible with a population approach. To determine the number of individuals required to detect the effect of a covariate, simulation-based power calculation methodologies can be employed. The Monte Carlo Mapped Power method (a simulation-based power calculation methodology using the likelihood ratio test) was extended in the current study to perform sample size calculations for mixed pharmacokinetic studies (i.e. both sparse and dense data collection). A workflow guiding an easy and straightforward pharmacokinetic study design, considering also the cost-effectiveness of alternative study designs, was used in this analysis. In..

View full abstract

University of Melbourne Researchers