Pai Sudhakar M, Girgis Suzette, Batra Vijay K, Girgis Ihab G
Clinical Pharmacology, Akros Pharma Inc, Princeton, NJ 08540, USA.
AAPS J. 2009 Sep;11(3):535-40. doi: 10.1208/s12248-009-9131-2. Epub 2009 Jul 24.
The objective of this stimulation study was to evaluate effect of simoidicity of the concentration-effect (C-E) relationship on the efficiency of population parameter estimation from sparse sampling and is a continuation of previous work that addressed the effect of sample size and number of samples on parameters estimation from sparse sampling for drugs with C-E relationship characterized by high sigmoidicity (gamma > 5). The findings are based on observed C-E relationships for two drugs, octreotide and remifentanil, characterized by simple E (max) and sigmoid E (max) models (gamma = ~2.5), respectively. For each model, C-E profiles (100 replicates of 100 subjects each) were simulated for several sampling designs, with four or five samples/individual randomly obtained from within sampling windows based on EC(50)-normalized plasma drug concentrations, PD parameters based on observed population mean values, and inter-individual and residual variability of 30% and 25%, respectively. The C-E profiles were fitted using non-linear mixed effect modeling with the first-order conditional estimation method; variability parameters were described by an exponential error model. The results showed that, for the sigmoid E (max) model, designs with four or five samples reliably estimated the PD parameters (EC(50), E (max), E (0), and gamma), whereas the five-sample design, with two samples in the 2-3 E (max) region, provided in addition more reliable estimates of inter-individual variability; increasing the information content of the EC(50) region was not critical as long as this region was covered by a single sample in the 0.5-1.5 EC(50) window. For the simple E (max) model, because of the shallower profile, enriching the EC(50) region was more important. The impact of enrichment of appropriate regions for the two models can be explained based on the shape (sigmoidicity) of the concentration-effect relationships, with shallower C-E profiles requiring data enrichment in the EC(50) region and steeper curves less so; in both cases, the E (max) region needs to be adequately delineated, however. The results provide a general framework for population parameter estimation from sparse sampling in clinical trials when the underlying C-E profiles have different degrees of sigmoidicity.
本刺激研究的目的是评估浓度-效应(C-E)关系的S形对稀疏采样中群体参数估计效率的影响,它是先前工作的延续,先前工作探讨了样本量和样本数量对具有高S形特征(γ>5)的C-E关系药物稀疏采样参数估计的影响。研究结果基于两种药物奥曲肽和瑞芬太尼的观察到的C-E关系,分别由简单E(max)和S形E(max)模型(γ=~2.5)表征。对于每个模型,针对几种采样设计模拟了C-E曲线(每个100名受试者的100次重复),基于EC(50)归一化血浆药物浓度在采样窗口内随机获取每个个体的四个或五个样本,基于观察到的群体平均值的PD参数,个体间和残差变异分别为30%和25%。使用一阶条件估计法的非线性混合效应模型对C-E曲线进行拟合;变异参数由指数误差模型描述。结果表明,对于S形E(max)模型,四个或五个样本的设计能够可靠地估计PD参数(EC(50)、E(max)、E(0)和γ),而五个样本的设计,在2-3 E(max)区域有两个样本,还能提供更可靠的个体间变异估计;只要EC(50)区域在0.5-1.5 EC(50)窗口内被一个样本覆盖,增加该区域的信息含量并不关键。对于简单E(max)模型,由于曲线较浅,富集EC(50)区域更为重要。基于浓度-效应关系的形状(S形)可以解释两种模型中适当区域富集的影响,较浅的C-E曲线需要在EC(50)区域进行数据富集,而较陡的曲线则不需要;然而,在两种情况下,E(max)区域都需要得到充分界定。当潜在的C-E曲线具有不同程度的S形时,这些结果为临床试验中稀疏采样的群体参数估计提供了一个通用框架。