Hu Can, Yin Wen-Jun, Li Dai-Yang, Ding Jun-Jie, Zhou Ling-Yun, Wang Jiang-Lin, Ma Rong-Rong, Liu Kun, Zhou Ge, Zuo Xiao-Cong
Department of Pharmacy, The Third Xiangya Hospital, Central South University, Changsha, Hunan, 410013, People's Republic of China.
Department of Pharmacy, Children's Hospital of Fudan University, Shanghai, 100029, People's Republic of China.
Eur J Clin Pharmacol. 2018 Nov;74(11):1437-1447. doi: 10.1007/s00228-018-2521-6. Epub 2018 Jul 17.
Numerous studies have been conducted on the population pharmacokinetics of tacrolimus in adult renal transplant recipients. It has been reported that the cytochrome P450 (CYP) 3A5 genotype is an important cause of variability in tacrolimus pharmacokinetics. However, the predictive performance of population pharmacokinetic (PK) models of tacrolimus should be evaluated prior to their implementation in clinical practice. The aim of the study reported here was to test the predictive performance of these published PK models of tacrolimus.
A literature search of the PubMed and Web of Science databases ultimately led to the inclusion of eight one-compartment models in our analysis. We collected a total of 1715 trough concentrations from 174 patients. Predictive performance was assessed based on visual and numerical comparison bias and imprecision and by the use of simulation-based diagnostics and Bayesian forecasting.
Of the eight one-compartment models assessed, seven showed better predictive performance in CYP3A5 extensive metabolizers in terms of bias and imprecision. Results of the simulation-based diagnostics also supported the findings. The model based on a Chinese population in 2013 (model 3) showed the best and most stable predictive performance in all the tests and was more informative in CYP3A5 extensive metabolizers. As expected, Bayesian forecasting improved model predictability. Diversity among models and between different CYP3A5 genotypes of the same model was also narrowed by Bayesian forecasting.
Based on our results, we recommend using model 3 in CYP3A5 extensive metabolizers in clinical practice. All models had a poor predictive performance in CYP3A5 poor metabolizers, and they should be used with caution in this patient population. However, Bayesian forecasting improved the predictability and reduced differences, and thus the models could be applied in this latter patient population for the design of maintenance dose.
针对他克莫司在成人肾移植受者中的群体药代动力学已开展了大量研究。据报道,细胞色素P450(CYP)3A5基因分型是他克莫司药代动力学变异性的一个重要原因。然而,他克莫司群体药代动力学(PK)模型在临床实践中应用之前,应先评估其预测性能。本文报道的这项研究旨在检验这些已发表的他克莫司PK模型的预测性能。
对PubMed和Web of Science数据库进行文献检索,最终在我们的分析中纳入了8个单室模型。我们总共收集了来自174例患者的1715个谷浓度数据。基于直观和数值比较偏差与不精密度,并通过基于模拟的诊断和贝叶斯预测来评估预测性能。
在评估的8个单室模型中,7个在CYP3A5广泛代谢者中,就偏差和不精密度而言显示出更好的预测性能。基于模拟的诊断结果也支持这些发现。2013年基于中国人群的模型(模型3)在所有测试中显示出最佳且最稳定的预测性能,并且在CYP3A5广泛代谢者中提供了更多信息。正如预期的那样,贝叶斯预测提高了模型的可预测性。贝叶斯预测还缩小了不同模型之间以及同一模型不同CYP3A5基因分型之间的差异。
基于我们的结果,我们建议在临床实践中,在CYP3A5广泛代谢者中使用模型3。所有模型在CYP3A5慢代谢者中的预测性能均较差,在该患者群体中应谨慎使用。然而,贝叶斯预测提高了可预测性并减少了差异,因此这些模型可应用于后一组患者群体以设计维持剂量。