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Levofloxacin Population Pharmacokinetics and Creation of a Demographic Model for Prediction of Individual Drug Clearance in Patients with Serious Community-Acquired Infection

机译:左氧氟沙星的人口药代动力学和人口统计学模型的建立以预测严重社区获得性感染患者的个体药物清除率

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摘要

Population pharmacokinetic modeling is a useful approach to obtaining estimates of both population and individual pharmacokinetic parameter values. The potential for relating pharmacokinetic parameters to pharmacodynamic outcome variables, such as efficacy and toxicity, exists. A logistic regression relationship between the probability of a successful clinical and microbiological outcome and the peak concentration-to-MIC ratio (and also the area under the plasma concentration-time curve [AUC]/MIC ratio) has previously been developed for levofloxacin; however, levofloxacin assays for determination of the concentration in plasma are not readily available. We attempted to derive and validate demographic variable models to allow prediction of the peak concentration in plasma and clearance (CL) from plasma for levofloxacin. Two hundred seventy-two patients received levofloxacin intravenously for the treatment of community-acquired infection of the respiratory tract, skin or soft tissue, or urinary tract, and concentrations in plasma, guided by optimal sampling theory, were obtained. Patient data were analyzed by the Non-Parametric Expectation Maximization approach. Maximum a posteriori probability Bayesian estimation was used to generate individual parameter values, including CL. Peak concentrations were simulated from these estimates. The first 172 patients were used to produce demographic models for the prediction of CL and the peak concentration. The remaining 100 patients served as the validation group for the model. A median bias and median precision were calculated. A two-compartment model was used for the population pharmacokinetic analysis. The mean CL and the mean volume of distribution of the central compartment (V1) were 9.27 liters/h and 0.836 liter/kg, respectively. The mean values for the intercompartmental rate constants, the rate constant from the central compartment to the peripheral compartment (Kcp) and the rate constant from the peripheral compartment to the central compartment (Kpc), were 0.487 and 0.647 h−1, respectively. The mean peak concentration and the mean AUC values normalized to a dosage of 500 mg every 24 h were 8.67 μg/ml and 72.53 μg · h/ml, respectively. The variables included in the final model for the prediction of CL were creatinine clearance (CLCR), race, and age. The median bias and median precision were 0.5 and 18.3%, respectively. Peak concentrations were predicted by using the demographic model-predicted parameters of CL, V1, Kcp, and Kpc, in the simulation. The median bias and the median precision were 3.3 and 21.8%, respectively. A population model of the disposition of levofloxacin has been developed. Population demographic models for the prediction of peak concentration and CL from plasma have also been successfully developed. However, the performance of the model for the prediction of peak concentration was likely insufficient to be of adequate clinical utility. The model for the prediction of CL was relatively robust, with acceptable bias and precision, and explained a reasonable amount of the variance in the CL of levofloxacin from plasma in the population (r2 = 0.396). Estimated CLCR, age, and race were the final model covariates, with CLCR explaining most of the population variance in the CL of levofloxacin from plasma. This model can potentially optimize the benefit derived from the pharmacodynamic relationships previously developed for levofloxacin.
机译:群体药代动力学建模是一种获得群体和个体药代动力学参数值估计值的有用方法。存在将药代动力学参数与药效结果变量(例如功效和毒性)相关联的潜力。先前已经为左氧氟沙星开发了成功的临床和微生物学结果的概率与峰值浓度与MIC比率(以及血浆浓度-时间曲线[AUC] / MIC比率下的面积)之间的对数回归关系;然而,左氧氟沙星测定血浆中浓度的方法尚不可用。我们试图推导并验证人口统计学变量模型,以预测血浆中的峰值浓度和左氧氟沙星的血浆清除率(CL)。 272例患者接受了静脉注射左氧氟沙星治疗社区获得性呼吸道,皮肤或软组织或泌尿道感染,并在最佳采样理论的指导下获得了血浆中的浓度。通过非参数期望最大化方法分析患者数据。使用最大后验概率贝叶斯估计来生成单个参数值,包括CL。从这些估计值中模拟出峰浓度。前172名患者被用于产生人口统计学模型,以预测CL和峰值浓度。其余100名患者作为模型的验证组。计算中位偏差和中位精度。两室模型用于群体药代动力学分析。中央隔室(V1)的平均CL和平均分布体积分别为9.27升/小时和0.836升/公斤。室间速率常数,从中央室到周围室的速率常数(Kcp)和从周围室到中央室的速率常数(Kpc)的平均值分别为0.487和0.647 hsup-1 < / sup>。标准化为每24小时500 mg剂量的平均峰值浓度和平均AUC值分别为8.67μg/ ml和72.53μg·h / ml。最终模型中预测CL的变量包括肌酐清除率(CLCR),种族和年龄。中位偏差和中位精度分别为0.5和18.3%。在模拟中,使用人口统计学模型预测的CL,V1,Kcp和Kpc参数预测了峰浓度。中位偏差和中位精度分别为3.3和21.8%。已经建立了左氧氟沙星处置的总体模型。还已经成功开发了用于预测血浆中峰浓度和CL的人口统计学模型。但是,用于预测峰浓度的模型的性能可能不足以具有足够的临床实用性。 CL的预测模型相对稳健,具有可接受的偏差和精确度,并解释了人群中血浆左氧氟沙星的CL的合理变化量(r 2 = 0.396)。估计的CLCR,年龄和种族是最终的模型协变量,其中CLCR解释了血浆左氧氟沙星CL的大多数人群差异。该模型可以潜在地优化从以前为左氧氟沙星开发的药效关系中获得的益处。

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