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A systems biology approach to dynamic modeling and inter-subject variability of statin pharmacokinetics in human hepatocytes.

  • Joachim Bucher
  • Stephan Riedmaier
  • Anke Schnabel
  • Katrin Marcus
  • Gabriele Vacun
  • Thomas S Weiss
  • Wolfgang E Thasler
  • Andreas K Nüssler
  • Ulrich M Zanger
  • Matthias Reuss
BMC Syst Biol 2011; 5 : 66
Abstract
BACKGROUND: The individual character of pharmacokinetics is of great importance in the risk assessment of new drug leads in pharmacological research. Amongst others, it is severely influenced by the properties and inter-individual variability of the enzymes and transporters of the drug detoxification system of the liver. Predicting individual drug biotransformation capacity requires quantitative and detailed models.
RESULTS: In this contribution we present the de novo deterministic modeling of atorvastatin biotransformation based on comprehensive published knowledge on involved metabolic and transport pathways as well as physicochemical properties. The model was evaluated on primary human hepatocytes and parameter identifiability analysis was performed under multiple experimental constraints. Dynamic simulations of atorvastatin biotransformation considering the inter-individual variability of the two major involved enzymes CYP3A4 and UGT1A3 based on quantitative protein expression data in a large human liver bank (n = 150) highlighted the variability in the individual biotransformation profiles and therefore also points to the individuality of pharmacokinetics.
CONCLUSIONS: A dynamic model for the biotransformation of atorvastatin has been developed using quantitative metabolite measurements in primary human hepatocytes. The model comprises kinetics for transport processes and metabolic enzymes as well as population liver expression data allowing us to assess the impact of inter-individual variability of concentrations of key proteins. Application of computational tools for parameter sensitivity analysis enabled us to considerably improve the validity of the model and to create a consistent framework for precise computer-aided simulations in toxicology.
Id Name JWS model
model0_bucher1 bucher1 bucher1
Id Name Source Number of Data Sources
Id Name Model Simulation Simulation Simulation
task0_model0_bucher1 bucher1 0.0 600.0 1000

2D Plots

Id Name Number of Curves
Figure_2_AS_in_cytosol Figure 2 AS in cytosol 0
Figure_2_AS_in_medium Figure 2 AS in medium 0
Figure_2_ASL_in_cytosol Figure 2 ASL in cytosol 0
Figure_2_ASL_in_medium Figure 2 ASL in medium 0
Figure_2_ASLoOH_in_cytosol Figure 2 ASLoOH in cytosol 0
Figure_2_ASLoOH_in_medium Figure 2 ASLoOH in medium 0
Figure_2_ASLpOH_in_cytosol Figure 2 ASLpOH in cytosol 0
Figure_2_ASLpOH_in_medium Figure 2 ASLpOH in medium 0
Figure_2_ASoOH_in_cytosol Figure 2 ASoOH in cytosol 0
Figure_2_ASoOH_in_medium Figure 2 ASoOH in medium 0
Figure_2_ASpOH_in_cytosol Figure 2 ASpOH in cytosol 0
Figure_2_ASpOH_in_medium Figure 2 ASpOH in medium 0

CSV Reports

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