| Literature DB >> 26928448 |
Richard Höglund1, Younis Moussavi2, Ronnatrai Ruengweerayut3, Anurak Cheomung4, Angela Äbelö5, Kesara Na-Bangchang6.
Abstract
BACKGROUND: A three-day course of chloroquine remains a standard treatment of Plasmodium vivax infection in Thailand with satisfactory clinical efficacy and tolerability although a continuous decline in in vitro parasite sensitivity has been reported. Information on the pharmacokinetics of chloroquine and its active metabolite desethylchloroquine are required for optimization of treatment to attain therapeutic exposure and thus prevent drug resistance development.Entities:
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Year: 2016 PMID: 26928448 PMCID: PMC4772585 DOI: 10.1186/s12936-016-1181-1
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1A two-compartment model (central and peripheral) with a one transit compartment model for the absorption of chloroquine into the central compartment and a first-order transformation of chloroquine into desethylchloroquine with an additional peripheral compartment added to desethylchloroquine. CQ is chloroquine compartments and DCQ represents desethylchloroquine compartments. k represents the rate constant between different compartments
Fig. 2Goodness of fit plots of chloroquine. Plots of the observed versus population predicted concentrations (a) and observed versus individual predicted concentrations (b). Weighed individual residuals versus individual predictions (c) and weighed residuals versus time (d). The black line is a non-parametric smoother describing the trend and the black line is the line of unity
Objection function values, parameter estimates and their precision for the final covariate model and the bootstrap. The bootstrap estimates are derived from the final covariate model
| Parameter | Estimated from | |
|---|---|---|
| Final covariate model (RSE) | Bootstrap 95 % CI | |
| Pharmacokinetic parametera | ||
| MTT (h) | 0.773 (43.1) | 0.809–2.38 |
| CLCQ/F (L/h) | 6.13 (3.40) | 5.74–6.55 |
| VC CQ/F (L) | 468 (16.0) | 137–529 |
| VP CQ/F (L) | 1600 (5.21) | 1470–1800 |
| QCQ/F (L/h) | 37.7 (18.9) | 31.1–69.0 |
| t1/2 CQ (days) | 10.7 | |
| CLDCQ/F (L/h) | 2.04 (3.50) | 1.90–2.18 |
| VC DCQ/F (L) | 2.27 (14.1) | 1.62–2.90 |
| VP DCQ/F (L) | 566,257 (14.4) | 198–341 |
| QDCQ/F (L/h) | 31.46 (12.3) | 1.11–1.83 |
| t1/2 DCQ (days) | 8.74 | |
| Interindividual variabilityb | ||
| BSV VC DCQ | 48.7 (47.5) | 17.9–71.1 |
| BSV VP CQ | 20.0 (61.6) | 8.25–31.9 |
| BSV VP DCQ | 86.8 (30.5) | 49.1–116 |
| BSV F | 19.4 (31.7) | 13.1–25.4 |
| Residual variabilityc | ||
| Proportional error CQ | 0.401 (5.34) | 0.360–0.444 |
| Proporional error DCQ | 0.431 (4.97) | 0.393–0.479 |
MTT mean transit time of the absorption, CLCQ/F apparent clearance of CQ for transformation into desethylchloroquine, VC CQ/F apparent volume of distribution for CQ central compartment, VP CQ/F apparent volume of distribution for CQ peripheral compartment, QCQ/F apparent intercompartmental clearance for CQ, t CQ half-life of chloroquine, KFCT constant describing the fraction of change in peripheral volume of distribution of chloroquine with each unit of fever clearance time, CL DCQ/F apparent clearance of DCQ, VC DCQ/F apparent volume of distribution for DCQ central compartment, VP DCQ/F apparent volume of distribution of DCQ peripheral compartment, QDCQ/F apparent intercompartmental clearance for DCQ, t half-life of desethylchloroquine. BSV is the between subject variability
aListed as estimates and their relative standard errors (RSE; %) in parenthesis. RSE is calculated based 603 succesfull bootstrap runa (out of 1000) according to: 100 × Standard deviation/Average, 95 % CI is the 95 % confidence interval of the bootstrap parameter estimates
bListed as coefficient of variation (CV; %) and their RSE (%) in parenthesis
cListed as CV (%) and their RSE (%) in parenthesis
Fig. 3Goodness of fit plots of desethylchloroquine. Plots of the observed versus population predicted concentrations (a) and observed versus individual predicted concentrations (b). Weighed individual residuals versus individual predictions (c) and weighed residuals versus time (d). The black line is a non-parametric smoother describing the trend and the black line is the line of unity
Fig. 4Plots from the visual predictive check for chloroquine (a) and desethylchloroquine (b) observations. The middle solid lines represent the median of simulated predictions by the final model. The dashed black lines represent the corresponding percentiles for the true observations. The black dots are the true observations and the grey shaded areas are the 95 % confidence intervals for the simulations. The decline in the upper percentiles of desethylchloroquine is due to base line values in the subjects