哌拉西林/他唑巴坦
哌拉西林
他唑巴坦
加药
医学
药效学
治疗指标
药代动力学
抗生素
药理学
β-内酰胺酶抑制剂
内科学
微生物学
药品
生物
遗传学
细菌
铜绿假单胞菌
作者
Suzanne A M Wenker,N. Alabdulkarim,John Readman,Elise M. A. Slob,Giovanni Satta,Shanom Ali,Nishma Gadher,Rob Shulman,Joseph F. Standing
标识
DOI:10.1093/jacamr/dlae036
摘要
Abstract Background It is important to optimize dosing schemes of antibiotics to maximize the probability of therapeutic success. The recommended pharmacokinetic/pharmacodynamic (PK/PD) index for piperacillin/tazobactam therapy in clinical studies ranges widely (50%–100% fT>1–4×MIC). Dosing schemes failing to achieve PK/PD targets may lead to negative treatment outcomes. Objectives The first aim of this study was to define the optimal PK/PD index of piperacillin/tazobactam with a hollow-fibre infection model (HFIM). The second aim was to predict whether these PK/PD targets are currently achieved in critically ill patients through PK/PD model simulation. Patients and methods A dose-fractionation study comprising 21 HFIM experiments was performed against a range of Gram-negative bacterial pathogens, doses and infusion times. Clinical data and dose histories from a case series of nine patients with a known bacterial infection treated with piperacillin/tazobactam in the ICU were collected. The PK/PD index and predicted plasma concentrations and therefore target attainment of the patients were simulated using R version 4.2.1. Results fT >MIC was found to be the best-fitting PK/PD index for piperacillin/tazobactam. Bactericidal activity with 2 log10 cfu reduction was associated with 77% fT>MIC. Piperacillin/tazobactam therapy was defined as clinically ‘ineffective’ in ∼78% (7/9) patients. Around seventy-one percent (5/7) of these patients had a probability of >10% that 2 log10 cfu reduction was not attained. Conclusions Our dose-fractionation study indicates an optimal PK/PD target in piperacillin/tazobactam therapies should be 77% fT>MIC for 2 log10 kill. Doses to achieve this target should be considered when treating patients in ICU.
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