Pharmacodynamics of ceftazidime and meropenem in cerebrospinal fluid:: results of population pharmacokinetic modelling and Monte Carlo simulation

被引:38
|
作者
Lodise, T. P.
Nau, R.
Kinzig, M.
Drusano, G. L.
Jones, R. N.
Soergel, F. [1 ]
机构
[1] Inst Biomed & Pharmaceut Res, Nurnberg, Germany
[2] Albany Coll Pharm, Albany, NY USA
[3] Ordway Res Inst, Albany, NY USA
[4] Univ Gottingen, D-3400 Gottingen, Germany
[5] JMI Labs, N Liberty, IA USA
关键词
population PK; CSF; gram-negative bacteria;
D O I
10.1093/jac/dkm325
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
Background: Ceftazidime and meropenem are frequently used in the empirical treatment of hospital-acquired cerebrospinal fluid (CSF) infections. Although their dispositions in CSF have been described, the ability of these agents to achieve critical pharmacodynamic targets against the array of nosocomial CSF Gram-negative bacteria encountered in practice has not been reported. Methods: Serum and CSF pharmacokinetic data were obtained from hospital patients with external ventricular drains and who received ceftazidime or meropenem. Concentration-time profiles in serum and CSF were modelled using a three-compartment model with zero-order infusion and first-order elimination and transfer. The model parameters were identified using population pharmacokinetic analysis [Big Non-Parametric Adaptive Grid (BigNPAG)]. A Monte Carlo simulation (9999 subjects) estimated the probability of target attainment (PTA) for total drug CSF concentrations at 50% and 100% T-> MIC for ceftazidime 2 g intravenously every 8 h and meropenem 2 g intravenously every 8 h. The Gram-negative infection isolates of the seven most prevalent Gram-negative bacilli from the Meropenem Yearly Susceptibility Test Information Collection Program were used as a measure of contemporary MIC distribution. Results: Post-Bayesian measures of bias and precision, observed-predicted plots and R-2 values were highly acceptable for both drugs. Although the PTA in CSF was approximately one dilution higher for ceftazidime compared with meropenem at a given MIC value, the cumulative fraction of response (CFR) in CSF against all Gram-negatives was markedly higher for meropenem when compared with ceftazidime secondary to the higher occurrence of lower MIC values for meropenem. Both agents had a low CFR against Pseudomonas aeruginosa. Conclusions: The pharmacodynamics of meropenem was superior to that of ceftazidime against Gram-negative pathogens in the CSF.
引用
收藏
页码:1038 / 1044
页数:7
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