School of Pharmacy, University of Pittsburgh, Pittsburgh, Pennsylvania 15261, USA.
Clin Pharmacokinet. 2011 Mar;50(3):201-14. doi: 10.2165/11538690-000000000-00000.
The objectives of this study were to evaluate the pharmacokinetics of voriconazole in liver transplant patients, probe covariate effects on voriconazole pharmacokinetics, externally validate the model and explore limited sampling strategies (LSSs) using Bayesian approaches.
Full pharmacokinetic profiles were collected within one oral dosing interval from 13 liver transplant patients. Nonlinear mixed-effects pharmacokinetic models were developed using NONMEM software. The final model was internally evaluated using bootstrapping and visual predictive check (VPC), and externally validated by predicting additional samples from different patients that were not used for model building. Maximum a posteriori Bayesian estimators were developed to predict the area under the plasma concentration-time curve (AUC) using the validated final model as the a priori model, actual dosing record and covariate values as the input, and a few concentrations (limited sampling) as feedback information (LSS). Mean prediction error (MPE) and mean absolute prediction error (MAPE) were calculated for external validation and LSS.
A one-compartment model with an absorption lag time (t(lag)) adequately described the data. Population estimates of total clearance after oral administration (CL/F) and volume of distribution after oral administration (V(d)/F) were 7.92 L/h and 248 L, respectively. Values of CL/F, V(d)/F and t(lag) decreased with post-operative time and converged to stable levels in about 7 post-operative days. CL/F significantly decreased with increased international normalized ratio. Co-administration of pantoprazole, race and alanine aminotransferase were also significantly associated with pharmacokinetic parameters but ultimately excluded in the final model. VPC showed that most of the data fell within the 90% prediction interval and were symmetrically distributed around the median. Additional 52 samples from 19 patients were collected for external validation. MPE was 0.206 μg/mL (not significantly different from zero) and MAPE was 0.99 μg/mL. Compared with trough levels, LSS using two samples or one sample at a different time provided better MPE, MAPE and correlation (R2) between the observed and LSS-predicted AUC.
The population model that was developed showed significant association of voriconazole pharmacokinetics with post-operative time and liver function, and was able to predict an independent external dataset. Our observations suggested a need for intravenous administration of voriconazole in the immediate post-operative period before an oral dose can be administrated. LSS using one sample appeared to be sufficient for reasonable AUC estimation.
本研究旨在评估肝移植患者伏立康唑的药代动力学,探讨药物代谢动力学参数的影响因素,验证模型并探索贝叶斯法下的有限采样策略(LSS)。
对 13 例肝移植患者单次口服给药后一个药物浓度时间曲线下面积(AUC)采集完整的药代动力学数据。采用 NONMEM 软件建立非线性混合效应药代动力学模型。采用 Bootstrap 法和可视化预测检查(VPC)对内模型进行评估,并采用不同患者的额外样本进行外部验证,这些样本未用于模型构建。采用最大后验概率贝叶斯估计(MAPE),使用验证后的最终模型作为先验模型,实际给药记录和协变量值作为输入,少量浓度(有限采样)作为反馈信息(LSS),预测 AUC。外部验证和 LSS 计算平均预测误差(MPE)和平均绝对预测误差(MAPE)。
口服后采用一室模型加吸收滞后时间(t(lag))能很好地描述数据。口服清除率(CL/F)和口服分布容积(V(d)/F)的群体估计值分别为 7.92 L/h 和 248 L。CL/F、V(d)/F 和 t(lag)的值随着术后时间的增加而降低,大约在术后 7 天达到稳定水平。CL/F 与国际标准化比值(INR)呈显著负相关。泮托拉唑、种族和丙氨酸氨基转移酶(ALT)的合用也与药代动力学参数显著相关,但最终在最终模型中被排除。VPC 显示,大部分数据落在 90%预测区间内,且对称分布在中位数周围。对另外 19 例患者的 52 个样本进行了外部验证。MPE 为 0.206μg/mL(与零无显著差异),MAPE 为 0.99μg/mL。与谷值浓度相比,使用两个样本或在不同时间使用一个样本的 LSS 可提供更好的 MPE、MAPE 和 AUC 观察值与 LSS 预测值之间的相关性(R2)。
所建立的群体模型表明,伏立康唑的药代动力学与术后时间和肝功能显著相关,能够预测独立的外部数据集。我们的观察结果表明,在口服给药之前,需要在术后立即给予伏立康唑静脉注射。使用一个样本的 LSS 似乎足以进行合理的 AUC 估计。