Salinger David H, McCune Jeannine S, Ren Aaron G, Shen Danny D, Slattery John T, Phillips Brian, McDonald George B, Vicini Paolo
Departments of Pharmacy, University of Washington, Seattle, Washington, USA.
Clin Cancer Res. 2006 Aug 15;12(16):4888-98. doi: 10.1158/1078-0432.CCR-05-2079.
Dose-related toxicity of cyclophosphamide may be reduced and therapeutic efficacy may be improved by pharmacokinetic sampling and dose adjustment to achieve a target area under the curve (AUC) for two of its metabolites, hydroxycyclophosphamide (HCY) and carboxyethylphosphoramide mustard (CEPM). To facilitate real-time dose adjustment, we developed open-source code within the statistical software R that incorporates individual data into a population pharmacokinetic model.
Dosage prediction performance was compared to that obtained with nonlinear mixed-effects modeling using NONMEM in 20 cancer patients receiving cyclophosphamide. Bayesian estimation of individual pharmacokinetic parameters was accomplished from limited (i.e., five samples over 0-16 hours) sampling of plasma HCY and CEPM after the initial cyclophosphamide dose. Conditional on individual pharmacokinetics, simulations of the AUC of both HCY and CEPM were provided for a range of second doses (i.e., 0-100 mg/kg cyclophosphamide).
The results compared favorably with NONMEM and returned accurate predictions for AUCs of HCY and CEPM with comparable mean absolute prediction error and root mean square prediction error. With our method, the mean absolute prediction error and root mean square prediction error of AUC CEPM were 11.0% and 12.8% and AUC HCY were 31.7% and 44.8%, respectively.
We developed dose adjustment software that potentially can be used to adjust cyclophosphamide dosing in a clinical setting, thus expanding the opportunity for pharmacokinetic individualization of cyclophosphamide. The software is simple to use (requiring no programming experience), reads individual patient data directly from an Excel spreadsheet, and runs in less than 5 minutes on a desktop PC.
通过药代动力学采样和剂量调整,以达到环磷酰胺的两种代谢产物——羟基环磷酰胺(HCY)和羧乙基磷酰胺氮芥(CEPM)的目标曲线下面积(AUC),从而降低环磷酰胺的剂量相关毒性,并提高治疗效果。为便于实时剂量调整,我们在统计软件R中开发了开源代码,将个体数据纳入群体药代动力学模型。
在20名接受环磷酰胺治疗的癌症患者中,将剂量预测性能与使用NONMEM进行非线性混合效应建模所获得的性能进行比较。在初始环磷酰胺剂量后,通过对血浆HCY和CEPM进行有限(即0 - 16小时内的5次采样)采样,完成个体药代动力学参数的贝叶斯估计。根据个体药代动力学情况,针对一系列第二剂量(即0 - 100 mg/kg环磷酰胺),提供了HCY和CEPM的AUC模拟值。
结果与NONMEM相比表现良好,对HCY和CEPM的AUC返回了准确的预测,平均绝对预测误差和均方根预测误差相当。使用我们的方法,CEPM的AUC的平均绝对预测误差和均方根预测误差分别为11.0%和12.8%,HCY的分别为31.7%和44.8%。
我们开发了剂量调整软件,该软件有可能用于临床环境中环磷酰胺剂量的调整,从而扩大环磷酰胺药代动力学个体化的机会。该软件易于使用(无需编程经验),可直接从Excel电子表格读取个体患者数据,在台式电脑上运行不到5分钟。