Björkman Sven
Division of Pharmacokinetics and Drug Therapy, Department of Pharmaceutical Biosciences, Uppsala University, Uppsala and Hospital Pharmacy, Malmö University Hospital, Malmö, Sweden.
J Pharmacokinet Pharmacodyn. 2003 Aug;30(4):285-307. doi: 10.1023/a:1026194618660.
Physiologically based pharmacokinetic (PBPK) models can be used to predict drug disposition in humans from animal data and the influence of disease or other changes in physiology on the pharmacokinetics of a drug. The potential usefulness of a PBPK model must however be balanced against the considerable effort needed for its development. Proposed methods to simplify PBPK modeling include predicting the necessary tissue:blood partition coefficients (kp) from physicochemical data on the drug instead of determining them in vivo, formal lumping of model compartments, and replacing the various kp values of the organs and tissues by only two values, for "fat" and "lean" tissues, respectively. The aim of this study was to investigate the effects of simplifying complex PBPK models on their ability to predict drug disposition in humans. Arterial plasma concentration curves of fentanyl and pethidine were simulated by means of a number of successively reduced models. Median absolute prediction errors were used to evaluate the performance of each model, in relation to arterial plasma concentration data from clinical studies, and the Wilcoxon matched pairs test was used for comparison of predictions. An originally diffusion-limited model for fentanyl was simplified to perfusion-limitation, and this model was either lumped, reducing 11 organ/tissue compartments to six, or changed to a model based on only two kp values, those of fat (used for fat and lungs) and muscle (used for all other tissues). None of these simplifications appreciably changed the predictions of arterial drug concentrations in the 10 patients. Perfusion-limited models for pethidine were set up using either experimentally determined [Gabrielsson et al. 1986] or theoretically calculated [Davis and Mapleson 1993] kp values, and predictions using the former were found to be significantly better. Lumping of the models did not appreciably change the predictions; however, going from a full set of kp values to only two ("fat" and "lean") had an adverse effect. Using a kp for lungs determined either in rats or indirectly in humans [Persson et al. 1988], i.e., a total of three kp values, improved these predictions. In conclusion, this study strongly suggested that complex PBPK models for lipophilic basic drugs may be considerably reduced with marginal loss of power to predict standard plasma pharmacokinetics in humans. Determination of only two or three kp values instead of a "full" set can mean an important reduction of experimental work to define a basic model. Organs of particular pharmacological or toxicological interest should of course be investigated separately as needed. This study also suggests and applies a simple method for statistical evaluation of the predictions of PBPK models.
基于生理的药代动力学(PBPK)模型可用于根据动物数据预测人体中的药物处置情况,以及疾病或其他生理变化对药物药代动力学的影响。然而,PBPK模型的潜在实用性必须与其开发所需的大量工作相权衡。简化PBPK建模的提议方法包括根据药物的物理化学数据预测必要的组织:血液分配系数(kp),而不是在体内测定它们;对模型隔室进行形式上的归并;以及分别用仅两个值(用于“脂肪”组织和“瘦”组织)代替器官和组织的各种kp值。本研究的目的是研究简化复杂的PBPK模型对其预测人体药物处置能力的影响。通过一系列逐步简化的模型模拟了芬太尼和哌替啶的动脉血浆浓度曲线。使用中位数绝对预测误差来评估每个模型相对于临床研究中的动脉血浆浓度数据的性能,并使用Wilcoxon配对检验进行预测比较。将芬太尼最初的扩散限制模型简化为灌注限制模型,该模型要么进行归并,将11个器官/组织隔室减少到6个,要么改为仅基于两个kp值(脂肪(用于脂肪和肺)和肌肉(用于所有其他组织))的模型。这些简化措施均未明显改变10名患者动脉药物浓度的预测结果。使用实验测定的[Gabrielsson等人,1986年]或理论计算的[Davis和Mapleson,1993年]kp值建立了哌替啶的灌注限制模型,发现使用前者的预测结果明显更好。模型的归并并未明显改变预测结果;然而,从全套kp值变为仅两个值(“脂肪”和“瘦”)产生了不利影响。使用在大鼠中测定或间接在人体中测定的[Persson等人,1988年]肺的kp值,即总共三个kp值,改善了这些预测结果。总之,本研究强烈表明,亲脂性碱性药物的复杂PBPK模型可能会大幅简化,而预测人体标准血浆药代动力学的能力仅有轻微损失。仅测定两个或三个kp值而不是“全套”kp值可能意味着在定义基本模型时实验工作的重要减少。当然,应根据需要分别研究具有特殊药理学或毒理学意义的器官。本研究还提出并应用了一种简单的方法来对PBPK模型的预测进行统计评估。