Literature DB >> 16810558

Diazepam pharamacokinetics from preclinical to phase I using a Bayesian population physiologically based pharmacokinetic model with informative prior distributions in WinBUGS.

Ivelina Gueorguieva1, Leon Aarons, Malcolm Rowland.   

Abstract

Modelling is an important applied tool in drug discovery and development for the prediction and interpretation of drug pharmacokinetics. Preclinical information is used to decide whether a compound will be taken forwards and its pharmacokinetics investigated in human. After proceeding to human little to no use is made of these often very rich data. We suggest a method where the preclinical data are integrated into a whole body physiologically based pharmacokinetic (WBPBPK) model and this model is then used for estimating population PK parameters in human. This approach offers a continuous flow of information from preclinical to clinical studies without the need for different models or model reduction. Additionally, predictions are based upon single parameter values, but making realistic predictions involves incorporating the various sources of variability and uncertainty. Currently, WBPBPK modelling is undertaken as a two-stage process: (i) estimation (optimisation) of drug-dependent parameters by either least squares regression or maximum likelihood and (ii) accounting for the existing parameter variability and uncertainty by stochastic simulation. To address these issues a general Bayesian approach using WinBUGS for estimation of drug-dependent parameters in WBPBPK models is described. Initially applied to data in rat, this approach is further adopted for extrapolation to human, which allows retention of some parameters and updating others with the available human data. While the issues surrounding the incorporation of uncertainty and variability within prediction have been explored within WBPBPK modeling methodology they have equal application to other areas of pharmacokinetics, as well as to pharmacodynamics.

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Year:  2006        PMID: 16810558     DOI: 10.1007/s10928-006-9023-3

Source DB:  PubMed          Journal:  J Pharmacokinet Pharmacodyn        ISSN: 1567-567X            Impact factor:   2.745


  14 in total

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3.  Reducing whole body physiologically based pharmacokinetic models using global sensitivity analysis: diazepam case study.

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7.  The population approach to pharmacokinetic data analysis: rationale and standard data analysis methods.

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Authors:  M E Andersen; H J Clewell; M L Gargas; F A Smith; R H Reitz
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10.  Statistical analysis of Clewell et al. PBPK model of trichloroethylene kinetics.

Authors:  F Y Bois
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  13 in total

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Review 3.  Combining the 'bottom up' and 'top down' approaches in pharmacokinetic modelling: fitting PBPK models to observed clinical data.

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4.  Population pharmacokinetic reanalysis of a Diazepam PBPK model: a comparison of Stan and GNU MCSim.

Authors:  Periklis Tsiros; Frederic Y Bois; Aristides Dokoumetzidis; Georgia Tsiliki; Haralambos Sarimveis
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5.  Use of partition coefficients in flow-limited physiologically-based pharmacokinetic modeling.

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6.  Comparing models for perfluorooctanoic acid pharmacokinetics using Bayesian analysis.

Authors:  John F Wambaugh; Hugh A Barton; R Woodrow Setzer
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7.  Linking preclinical and clinical whole-body physiologically based pharmacokinetic models with prior distributions in NONMEM.

Authors:  Grant Langdon; Ivelina Gueorguieva; Leon Aarons; Mats Karlsson
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8.  Incorporation of stochastic variability in mechanistic population pharmacokinetic models: handling the physiological constraints using normal transformations.

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Journal:  J Pharmacokinet Pharmacodyn       Date:  2015-05-26       Impact factor: 2.745

9.  Reduction of a Whole-Body Physiologically Based Pharmacokinetic Model to Stabilise the Bayesian Analysis of Clinical Data.

Authors:  Thierry Wendling; Nikolaos Tsamandouras; Swati Dumitras; Etienne Pigeolet; Kayode Ogungbenro; Leon Aarons
Journal:  AAPS J       Date:  2015-11-04       Impact factor: 4.009

10.  Application of a Bayesian approach to physiological modelling of mavoglurant population pharmacokinetics.

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Journal:  J Pharmacokinet Pharmacodyn       Date:  2015-08-01       Impact factor: 2.745

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