Cellière Géraldine, Krause Andreas, Bonnefois Guillaume, Chauvin Jonathan
Clinical Pharmacology and Pharmacometrics, Simulations Plus, Inc., PO Box 12317, Research Triangle Park, NC, 27709, USA.
J Pharmacokinet Pharmacodyn. 2025 May 10;52(3):31. doi: 10.1007/s10928-025-09975-6.
The white-paper regression model is the standard method for assessing QT liability of drugs. The quantity of interest, placebo-corrected QTc change from baseline (ΔΔQTc) with corresponding confidence interval (CI), is derived from the difference in model-estimated ΔQTc for active compound and placebo in a linear model. Model assumptions include linearity and no time delay between change in concentration and change in ΔQTc. Alternative models are commonly not considered unless there is a clear indication of inappropriateness of the assumptions. This work introduces several extensions for concentration-QT modeling in a pharmacometric context. The model is formulated as linear drug-effect model with treatment, nominal time, and centered baseline as covariates on the intercept. This approach enables straightforward use of other concentration-ΔQTc relationships, including loglinear, E, and indirect-effects models. In addition, the setup allows for the use of pharmacometric model assessments for ΔQTc and ΔΔQTc, including visual predictive checks and quantitative model comparison based on the Bayesian information criterion. The proposed approach is applied to several compounds from a previously published QTc study. The results suggest that a nonlinear mixed-effects model for ΔΔQTc and comparing a set of candidate models quantitatively can be a more powerful approach than fitting only the white-paper regression model. A semi-automated approach that compares nonlinear and hysteresis models to the linear model enables a reliable choice of the best model and determination of the degree of prolongation at the concentration of interest. Standard pharmacometric tools can assess the appropriateness of the models and the potential extent of hysteresis.
白皮书回归模型是评估药物QT间期影响的标准方法。关注的指标,即从基线校正安慰剂后的QTc变化量(ΔΔQTc)及其相应的置信区间(CI),是通过线性模型中活性化合物和安慰剂的模型估计ΔQTc之差得出的。模型假设包括线性以及浓度变化与ΔQTc变化之间无时间延迟。除非有明确迹象表明假设不适用,否则通常不会考虑替代模型。这项工作在药代动力学背景下介绍了几种浓度-QT建模的扩展方法。该模型被构建为线性药物效应模型,将治疗、标称时间和中心化基线作为截距的协变量。这种方法能够直接使用其他浓度-ΔQTc关系,包括对数线性模型、E模型和间接效应模型。此外,该设置允许对ΔQTc和ΔΔQTc进行药代动力学模型评估,包括可视化预测检查和基于贝叶斯信息准则的定量模型比较。所提出的方法应用于先前发表的QTc研究中的几种化合物。结果表明,对于ΔΔQTc的非线性混合效应模型以及定量比较一组候选模型,可能比仅拟合白皮书回归模型更有效。一种将非线性和滞后模型与线性模型进行比较的半自动方法能够可靠地选择最佳模型,并确定感兴趣浓度下的延长程度。标准的药代动力学工具可以评估模型的适用性和滞后的潜在程度。