Academic Unit of Clinical Pharmacology, University of Sheffield, Royal Hallamshire Hospital, Sheffield, UK.
Biopharm Drug Dispos. 2010 Nov;31(8-9):516-32. doi: 10.1002/bdd.732.
The creation of virtual populations allows the estimation of pharmacokinetic parameters, such as metabolic clearance in extreme individuals rather than the 'average human'. Prediction of variability in metabolic clearance within genetically diverse populations relies on understanding the covariation in the expression of enzymes. A number of statistically significant positive correlations have been observed in the hepatic expression of cytochrome P450 drug metabolising enzymes. However, these rarely provided a quantitative description of the relationships which is required in creating virtual populations. Collation of data from 40 human liver microsomal samples in the current study indicated a significant positive relationship between hepatic microsomal CYP3A5*1/3 and CYP3A4 content. Having developed a model describing the relationship between hepatic CYP3A4 and CYP3A51/3, the Simcyp Population-based Simulator(®) was used to investigate the consequences of either incorporating or ignoring the relationship between the two enzymes on estimates of drug clearance. Simulations indicated that for a compound with greater metabolism by CYP3A5 than CYP3A4, such as tacrolimus, incorporation of the correlation between CYP3A4 and CYP3A5 does have an impact on the prediction of oral clearance. Failure to consider the relationship between CYP3A4 and CYP3A5 when creating the virtual population led to a 32% lower estimate of oral clearance in individuals possessing both the CYP3A51/*3 genotype and high basal concentrations of CYP3A4. Potential clinical implications may include an inadequate dose estimation during clinical study design, the consequences of which may include organ rejection in transplant recipients using immunosuppressants such as tacrolimus or toxicity due to elevated concentrations of circulating metabolites.
虚拟人群的创建允许估算药代动力学参数,例如代谢清除率在极端个体中而不是“平均人”。预测遗传多样性人群中代谢清除率的变异性依赖于对酶表达的变异性的理解。在细胞色素 P450 药物代谢酶的肝表达中已经观察到许多具有统计学意义的正相关。然而,这些相关性很少提供创建虚拟人群所需的定量描述。本研究中对 40 个人肝微粒体样本的数据进行整理,表明肝微粒体 CYP3A5*1/3 和 CYP3A4 含量之间存在显著的正相关关系。在开发了描述肝 CYP3A4 和 CYP3A51/3 之间关系的模型之后,使用 Simcyp 基于人群的模拟器(®)来研究在估计药物清除率时纳入或忽略两种酶之间的关系的后果。模拟表明,对于代谢主要由 CYP3A5 而非 CYP3A4 进行的化合物(如他克莫司),纳入 CYP3A4 和 CYP3A5 之间的相关性确实会对口服清除率的预测产生影响。在创建虚拟人群时不考虑 CYP3A4 和 CYP3A5 之间的关系会导致同时具有 CYP3A51/*3 基因型和高基础 CYP3A4 浓度的个体的口服清除率估计值降低 32%。潜在的临床意义可能包括在临床研究设计期间的剂量估计不足,其后果可能包括使用免疫抑制剂(如他克莫司)的移植受者发生器官排斥或由于循环代谢物浓度升高而发生毒性。