| Literature DB >> 25620089 |
Oskar Clewe1, Sylvain Goutelle, John E Conte, Ulrika S H Simonsson.
Abstract
PURPOSE: The purpose of the study was to develop a drug-unspecific approach to pharmacometric modeling for predicting the rate and extent of distribution from plasma to epithelial lining fluid (ELF) and alveolar cells (AC) for data emanating from studies involving bronchoalveolar lavage (BAL) sampling, using rifampicin (RIF) as an example.Entities:
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Year: 2015 PMID: 25620089 PMCID: PMC4333237 DOI: 10.1007/s00228-014-1798-3
Source DB: PubMed Journal: Eur J Clin Pharmacol ISSN: 0031-6970 Impact factor: 2.953
Fig. 1Schematic representation of the final rifampicin (RIF) lung and plasma pharmacometric submodels. Drug is transferred via a number of transit absorption compartments to the absorption compartment and further via the rate constant k a to the central plasma compartment. Rifampicin autoinduction was modeled with an enzyme turn-over model in which the RIF plasma concentrations increased the enzyme production rate (k ) which in turn increased the enzyme pool in a non-linear fashion by means of an E MAX-model. Cp is the RIF plasma concentration and E is the maximal autodinduction of CL/F. EC is the RIF concentration resulting in 50 % of the maximal autoinduction of CL/F. The ELF and AC drug penetration sub models were described using two parameters for each submodel. The rate of distribution of drug from plasma to ELF and AC was captured by two distribution rate constant, k ELF and k AC, respectively. The extent of distribution to ELF and AC was described by unbound ELF/plasma concentration ratio (R ELF/unbound-plasma) and unbound AC/plasma concentration ratio (R AC/unbound-plasma)
Fig. 2Prediction-corrected visual predictive check of the final RIF plasma, ELF and AC pharmacometric submodels. The open circles are the population prediction-corrected observations. The solid line is the median of the observed data and the dashed lines are the 5th and 95th percentiles of the observed data. The top and bottom shaded areas are the 95 % confidence intervals for the 5th percentile and the 95th percentile of simulated data. The middle shaded area is the 95 % confidence interval for the median of the simulated data
Parameter estimates and relative standard errors of the final model
| Parameter | Estimate (95 % CI) | Relative standard error (%) |
|---|---|---|
| TV( | 3.85 (2.26–8.68) | 3.1 |
| TV( | 76.6 (60.85–88.83) | 2.7 |
| MTT (h) | 0.71a | |
|
| 1a | |
|
| 1.04a | |
| EC50 (mgL−1) | 0.0705a | |
|
| 0.0036a | |
|
| 41.58a | |
|
| 0.26 (0.21–0.31) | 4.3 |
|
| 1.28b | |
|
| 41.58a | |
|
| 1.1 (0.92–1.35) | 6.2 |
|
| 5.5c | |
| IIVCL/F (%) | 88.8 (9.43–106.77) | 24.2 |
| Plasma proportional error (%) | 35.2 (25.11–45.42) | 3.6 |
| ELF proportional error (%) | 40.7 (30.26–54.76) | 2.9 |
| AC proportional error (%) | 37.1 (22.95–46.91) | 7.3 |
IIV interindividual variability expressed as coefficient of variation, RSE relative standard error reported on the approximate standard deviation scale
aFixed parameter
bCalculated post estimation as R ELF/plasma divided by the free fraction in plasma (20 %) [23]
cCalculated post estimation as R AC/plasma divided by the free fraction in plasma (20 %) [23]