Wong Gloria, Farkas Andras, Sussman Rachel, Daroczi Gergely, Hope William W, Lipman Jeffrey, Roberts Jason A
Burns, Trauma and Critical Care Research Centre, The University of Queensland, Brisbane, Queensland, Australia.
Department of Pharmacy, Vassar Brothers Medical Center, Poughkeepsie, New York, USA Optimum Dosing Strategies, Bloomingdale, New Jersey, USA.
Antimicrob Agents Chemother. 2015 Mar;59(3):1411-7. doi: 10.1128/AAC.04001-14. Epub 2014 Dec 15.
Population pharmacokinetic analyses can be applied to predict optimized dosages for individual patients. The aim of this study was to compare the prediction performance of the published population pharmacokinetic models for meropenem in critically ill patients. We coded the published population pharmacokinetic models with covariate relationships into dosing software to predict unbound meropenem concentrations measured in a separate cohort of critically ill patients. The agreements between the observed and predicted concentrations were evaluated with Bland-Altman plots. The absolute and relative bias and precision of the models were determined. The clinical implications of the results were evaluated according to whether dose adjustments were required from the predictions to achieve a meropenem concentration of >2 mg/liter throughout the dosing interval. A total of 157 free meropenem concentrations from 56 patients were analyzed. Eight published population pharmacokinetic models were compared. The models showed an absolute bias in predicting the unbound meropenem concentrations from a mean percent difference (95% confidence interval [CI]) of -108.5% (-119.9% to -97.3%) to 19.9% (7.3% to 32.7%), while absolute precision ranged from -249.1% (-263.4% to -234.8%) to 31.9% (17.6% to 46.2%) and -178.9% (-196.9% to -160.9%) to 175.0% (157.0% to 193.0%). A dose change was required in 44% to 64% of the concentration results. Seven of the eight equations evaluated underpredicted free meropenem concentrations. In conclusion, the overall accuracy of these models supports their inclusion in dosing software and application for individualizing meropenem doses in critically ill patients to increase the likelihood of achievement of optimal antibiotic exposures.
群体药代动力学分析可用于预测个体患者的优化剂量。本研究的目的是比较已发表的美罗培南群体药代动力学模型对重症患者的预测性能。我们将具有协变量关系的已发表群体药代动力学模型编码到给药软件中,以预测在另一组重症患者中测得的游离美罗培南浓度。通过Bland-Altman图评估观察浓度与预测浓度之间的一致性。确定模型的绝对和相对偏差及精密度。根据预测是否需要调整剂量以在整个给药间隔内使美罗培南浓度>2 mg/L来评估结果的临床意义。共分析了56例患者的157个游离美罗培南浓度。比较了8个已发表的群体药代动力学模型。这些模型在预测游离美罗培南浓度时的绝对偏差,平均百分比差异(95%置信区间[CI])为-108.5%(-119.9%至-97.3%)至19.9%(7.3%至32.7%),而绝对精密度范围为-249.1%(-263.4%至-234.8%)至31.9%(17.6%至46.2%)以及-178.9%(-196.9%至-160.9%)至175.0%(157.0%至193.0%)。44%至64%的浓度结果需要改变剂量。所评估的8个方程中有7个低估了游离美罗培南浓度。总之,这些模型的总体准确性支持将其纳入给药软件,并应用于重症患者美罗培南剂量个体化,以增加实现最佳抗生素暴露的可能性。