Roche Pharma Research and Early Development, Pharmaceutical Sciences, Roche Innovation Center Basel, Basel, Switzerland.
Department of Clinical Pharmacy and Biochemistry, Institute of Pharmacy, Freie Universität Berlin, Berlin, Germany.
CPT Pharmacometrics Syst Pharmacol. 2024 Oct;13(10):1707-1721. doi: 10.1002/psp4.13213. Epub 2024 Aug 18.
The Pharmpy Automatic Model Development (AMD) tool automates the building of population pharmacokinetic (popPK) models by utilizing a systematic stepwise process. In this study, the performance of the AMD tool was assessed using simulated datasets. Ten true models mimicking classical popPK models were created. From each true model, dataset replicates were simulated assuming a typical phase I study design-single and multiple ascending doses with/without dichotomous food effect, with rich PK sampling. For every dataset replicate, the AMD tool automatically built an AMD model utilizing NONMEM for parameter estimation. The AMD models were compared to the true and reference models (true model fitted to simulated datasets) based on their model components, predicted population and individual secondary PK parameters (SP) (AUC, c, c), and model quality metrics (e.g., model convergence, parameter relative standard errors (RSEs), Bayesian Information Criterion (BIC)). The models selected by the AMD tool closely resembled the true models, particularly in terms of distribution and elimination, although differences were observed in absorption and inter-individual variability components. Bias associated with the derived SP was low. In general, discrepancies between AMD and true SP were also observed for reference models and therefore were attributed to the inherent stochasticity in simulations. In summary, the AMD tool was found to be a valuable asset in automating repetitive modeling tasks, yielding reliable PK models in the scenarios assessed. This tool has the potential to save time during early clinical drug development that can be invested in more complex modeling activities within model-informed drug development.
Pharmpy 自动模型开发(AMD)工具通过利用系统的逐步过程,自动构建群体药代动力学(popPK)模型。在本研究中,使用模拟数据集评估了 AMD 工具的性能。创建了十个模仿经典 popPK 模型的真实模型。从每个真实模型中,模拟了数据集副本,假设了典型的 I 期研究设计——单剂量和多剂量递增,有/无二项食物效应,以及丰富的 PK 采样。对于每个数据集副本,AMD 工具使用 NONMEM 自动构建 AMD 模型进行参数估计。基于模型组件、预测的群体和个体二次 PK 参数(AUC、c、c)以及模型质量指标(例如模型收敛性、参数相对标准误差(RSE)、贝叶斯信息准则(BIC)),将 AMD 模型与真实和参考模型(拟合模拟数据集的真实模型)进行比较。AMD 工具选择的模型与真实模型非常相似,特别是在分布和消除方面,尽管在吸收和个体间变异性方面观察到了差异。衍生的 SP 的偏差较低。一般来说,AMD 和真实 SP 之间也存在差异参考模型,因此归因于模拟中的固有随机性。总之,AMD 工具在自动化重复建模任务方面被发现是一项有价值的资产,在评估的情况下产生可靠的 PK 模型。该工具有可能在早期临床药物开发期间节省时间,这些时间可以用于模型指导药物开发中的更复杂建模活动。