Faculty of Pharmacy, Université de Montréal, Montréal, Quebec, Canada.
Department of Pharmaceutics, Faculty of Pharmacy, Qassim University, Buraydah, Saudi Arabia.
Clin Transl Sci. 2022 Apr;15(4):942-953. doi: 10.1111/cts.13210. Epub 2022 Feb 15.
The recently released revised vancomycin consensus guideline endorsed area under the concentration-time curve (AUC) guided monitoring. Means to AUC-guided monitoring include pharmacokinetic (PK) equations and Bayesian software programs, with the latter approach being preferable. We aimed to evaluate the predictive performance of these two methods when monitoring using troughs or peaks and troughs at varying single or mixed dosing intervals (DIs), and evaluate the significance of satisfying underlying assumptions of steady-state and model transferability. Methods included developing a vancomycin population PK model and conducting model-informed precision dosing clinical trial simulations. A one-compartment PK model with linear elimination, exponential between-subject variability, and mixed (additive and proportional) residual error model resulted in the best model fit. Conducted simulations demonstrated that Bayesian-guided AUC can, potentially, outperform that of equation-based AUC predictions depending on the quality of model diagnostics and met assumptions. Ideally, Bayesian-guided AUC predictive performance using a trough from the first DI was equivalent to that of PK equations using two measurements (peak and trough) from the fifth DI. Model transferability diagnostics can guide the selection of Bayesian priors but are not strong indicators of predictive performance. Mixed versus single fourth and/or fifth DI sampling seems indifferent. This study illustrated cases associated with the most reliable AUC predictions and showed that only proper Bayesian-guided monitoring is always faster and more reliable than equations-guided monitoring in pre-steady-state DIs in the absence of a loading dose. This supports rapid Bayesian monitoring using data as sparse and early as a trough at the first DI.
最近发布的修订版万古霉素共识指南支持基于浓度-时间曲线下面积(AUC)的监测。AUC 指导监测的方法包括药代动力学(PK)方程和贝叶斯软件程序,后者方法更优。我们旨在评估这两种方法在使用谷值或峰值和不同单一或混合给药间隔(DI)时监测的预测性能,并评估满足稳态和模型可转移性基本假设的重要性。方法包括开发万古霉素群体 PK 模型和进行模型指导的精准剂量临床试验模拟。具有线性消除、指数性个体间变异性和混合(加性和比例性)残差模型的单室 PK 模型导致最佳模型拟合。进行的模拟表明,贝叶斯指导的 AUC 可能取决于模型诊断和假设的质量,从而优于基于方程的 AUC 预测。理想情况下,使用第一个 DI 的谷值进行贝叶斯指导的 AUC 预测性能与使用第五个 DI 的两个测量值(峰值和谷值)进行 PK 方程预测的性能相当。模型可转移性诊断可以指导贝叶斯先验的选择,但不是预测性能的有力指标。混合与单一第四和/或第五 DI 采样似乎没有区别。本研究说明了与最可靠 AUC 预测相关的情况,并表明,在没有负荷剂量的情况下,仅适当的贝叶斯指导监测在预稳态 DI 中始终比基于方程的监测更快、更可靠。这支持在第一个 DI 时使用最早的谷值进行快速贝叶斯监测,数据可以稀疏且早期。