2009
DOI: 10.1128/aac.00054-09
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New Semiphysiological Absorption Model To Assess the Pharmacodynamic Profile of Cefuroxime Axetil Using Nonparametric and Parametric Population Pharmacokinetics

Abstract: Cefuroxime axetil is widely used to treat respiratory tract infections. We are not aware of a population pharmacokinetic (PK) model for cefuroxime axetil. Our objectives were to develop a semiphysiological population PK model and evaluate the pharmacodynamic profile for cefuroxime axetil. Twenty-four healthy volunteers received 250 mg oral cefuroxime as a suspension after a standardized breakfast. Liquid chromatographytandem mass spectrometry was used for drug analysis, NONMEM and S-ADAPT (results reported) we… Show more

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Cited by 20 publications
(21 citation statements)
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“…The nonlinear mixed-effects modeling of PAS disposition in M. tuberculosis-HIV-coinfected patients was performed using NONMEM (version 7.2) with first-order conditional estimation and with interaction. The one-compartment model with first-order absorption with lag time or transit compartment followed by first-order absorption (15,16) or mixed Michaelis-Menten and first-order absorption (17) was explored for the steady-state concentration-time profiles of patients who were administered 8 g PAS once daily or 4 g PAS twice daily. The final structural model was parameterized on the PK parameters: transit rate constant (K tr ) with 3 transit compartments, apparent oral clearance (CL/F), and the apparent volume of distribution (V/F).…”
Section: Methodsmentioning
confidence: 99%
“…The nonlinear mixed-effects modeling of PAS disposition in M. tuberculosis-HIV-coinfected patients was performed using NONMEM (version 7.2) with first-order conditional estimation and with interaction. The one-compartment model with first-order absorption with lag time or transit compartment followed by first-order absorption (15,16) or mixed Michaelis-Menten and first-order absorption (17) was explored for the steady-state concentration-time profiles of patients who were administered 8 g PAS once daily or 4 g PAS twice daily. The final structural model was parameterized on the PK parameters: transit rate constant (K tr ) with 3 transit compartments, apparent oral clearance (CL/F), and the apparent volume of distribution (V/F).…”
Section: Methodsmentioning
confidence: 99%
“…The residual unidentified variability was modeled by a combined additive and proportional error model for plasma concentrations and amounts in urine. We applied first-order conditional estimation using the interaction option in NONMEM VI level 1.2 software (8) and the importance sampling Monte-Carlo Parametric Expectation-Maximization method (pmethod ϭ 4) in S-ADAPT software (version 1.57 beta) (6) for population PK modeling as reported previously (16,18,19). The SADAPT-TRAN translator tool (14) was used to facilitate S-ADAPT analyses.…”
Section: Subjectsmentioning
confidence: 99%
“…Linear one-, two-, and threecompartment models with a time-delimited zero order input into the central compartment were considered. Models were discriminated based on their predictive performance determined by visual predictive checks (VPCs) (16) and normalized prediction distribution errors (NPDE) (11), their objective function value, and standard diagnostic plots as previously described (19). Renal clearance (CL R ) and nonrenal clearance (CL NR ) were estimated by simultaneously fitting plasma concentrations and amounts excreted unchanged into urine.…”
Section: Subjectsmentioning
confidence: 99%
“…(i) Structural model. We tested one-, two-, and three-compartment models with linear disposition and evaluated competing models using their predictive performance assessed via visual predictive checks (VPCs), the objective function, and standard diagnostic plots as described previously (16,18).…”
Section: Subjectsmentioning
confidence: 99%
“…An exponential model was used to describe the BSV of PK parameters, and a combined additive and proportional error model was used to describe the residual unidentified variability as reported previously (16,18). We used the first-order conditional estimation with the interaction option (FOCEϩI) in NONMEM V release 1.1 (10), the importance sampling Monte-Carlo parametric expectation maximization method (pmethod ϭ 8) in S-ADAPT (version 1.56) (9), and the nonparametric adaptive grid (NPAG) algorithm of the USC*PACK (version 12.00) (43) for population PK modeling as described previously (16,18). WinNonlin Professional (version 4.0.1; Pharsight Corp., Mountain View, CA) was used for noncompartmental analysis and statistics.…”
Section: Subjectsmentioning
confidence: 99%