Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
3348502 | Diagnostic Microbiology and Infectious Disease | 2006 | 4 Pages |
Abstract
Monte Carlo simulations (MCSs) are increasingly being used to predict the pharmacokinetic variability of antimicrobials in a population. However, various MCS approaches may differ in the accuracy of the predictions. We compared the performance of 3 different MCS approaches using a data set with known parameter values and dispersion. Ten concentration-time profiles were randomly generated and used to determine the best-fit parameter estimates. Three MCS methods were subsequently used to simulate the AUC0-â of the population, using the central tendency and dispersion of the following in the subject sample: 1) K and V; 2) clearance and V; 3) AUC0-â. In each scenario, 10Â 000 subject simulations were performed. Compared to true AUC0-â of the population, mean biases by various methods were 1) 58.4, 2) 380.7, and 3) 12.5 mg h Lâ1, respectively. Our results suggest that the most realistic MCS approach appeared to be based on the variability of AUC0-â in the subject sample.
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Authors
Vincent H. Tam, Samer Kabbara,