Zhu Yu-Bin, Hong Xian-Hua, Wei Meng, Hu Jing, Chen Xin, Wang Shu-Kui, Zhu Jun-Rong, Yu Feng, Sun Jian-Guo
Department of Pharmacy, Nanjing First Hospital, Nanjing Medical University, Nanjing 210006, China.
School of Clinical Pharmacy, China Pharmaceutical University, Nanjing 210002, China.
Acta Pharmacol Sin. 2017 Mar;38(3):434-442. doi: 10.1038/aps.2016.163. Epub 2017 Feb 20.
The gene-guided dosing strategy of warfarin generally leads to over-dose in patients at doses lower than 2 mg/kg, and only 50% of individual variability in daily stable doses can be explained. In this study, we developed a novel population pharmacokinetic (PK) model based on a warfarin dose algorithm for Han Chinese patients with valve replacement for improving the dose prediction accuracy, especially in patients with low doses. The individual pharmacokinetic (PK) parameter - apparent clearance of S- and R-warfarin (CLs) was obtained after establishing and validating the population PK model from 296 recruited patients with valve replacement. Then, the individual estimation of CLs, VKORC1 genotypes, the steady-state international normalized ratio (INR) values and age were used to describe the maintenance doses by multiple linear regression for 144 steady-state patients. The newly established dosing algorithm was then validated in an independent group of 42 patients and was compared with other dosing algorithms for the accuracy and precision of prediction. The final regression model developed was as follows: Dose=-0.023×AGE+1.834×VKORC1+0.952×INR+2.156×CLs (the target INR value ranges from 1.8 to 2.5). The validation of the algorithm in another group of 42 patients showed that the individual variation rate (71.6%) was higher than in the gene-guided dosing models. The over-estimation rate in patients with low doses (<2 mg/kg) was lower than the other dosing methods. This novel dosing algorithm based on a population PK model improves the predictive performance of the maintenance dose of warfarin, especially for low dose (<2 mg/d) patients.
华法林的基因指导给药策略通常会导致剂量低于2mg/kg的患者出现过量用药情况,且仅能解释每日稳定剂量中50%的个体差异。在本研究中,我们基于华法林剂量算法为行瓣膜置换术的汉族患者开发了一种新型群体药代动力学(PK)模型,以提高剂量预测准确性,尤其是在低剂量患者中。在建立并验证了来自296例招募的瓣膜置换术患者的群体PK模型后,获得了个体药代动力学(PK)参数——S-和R-华法林的表观清除率(CLs)。然后,使用CLs的个体估计值、VKORC1基因型、稳态国际标准化比值(INR)值和年龄,通过多元线性回归描述144例稳态患者的维持剂量。随后,在一个由42例患者组成的独立组中验证了新建立的给药算法,并将其与其他给药算法进行预测准确性和精确性的比较。最终建立的回归模型如下:剂量 = -0.023×年龄 + 1.834×VKORC1 + 0.952×INR + 2.156×CLs(目标INR值范围为1.8至2.5)。在另一组42例患者中对该算法的验证表明,个体变异率(71.6%)高于基因指导给药模型。低剂量(<2mg/kg)患者的高估率低于其他给药方法。这种基于群体PK模型的新型给药算法提高了华法林维持剂量的预测性能,尤其是对于低剂量(<2mg/d)患者。