Zhang Lina, Liu Maochang, Qin Weiwei, Shi Dandan, Mao Junjun, Li Zeyun
Department of Neurology, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
Department of Pharmacy, Wuhan Children's Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, Hubei, China.
Front Pharmacol. 2023 Oct 6;14:1228641. doi: 10.3389/fphar.2023.1228641. eCollection 2023.
Several studies have investigated the population pharmacokinetics (popPK) of valproic acid (VPA) in children with epilepsy. However, the predictive performance of these models in the extrapolation to other clinical environments has not been studied. Hence, this study evaluated the predictive abilities of pediatric popPK models of VPA and identified the potential effects of protein binding modeling strategies. A dataset of 255 trough concentrations in 202 children with epilepsy was analyzed to assess the predictive performance of qualified models, following literature review. The evaluation of external predictive ability was conducted by prediction- and simulation-based diagnostics as well as Bayesian forecasting. Furthermore, five popPK models with different protein binding modeling strategies were developed to investigate the discrepancy among the one-binding site model, Langmuir equation, dose-dependent maximum effect model, linear non-saturable binding equation and the simple exponent model on model predictive ability. Ten popPK models were identified in the literature. Co-medication, body weight, daily dose, and age were the four most commonly involved covariates influencing VPA clearance. The model proposed by Serrano et al. showed the best performance with a median prediction error (MDPE) of 1.40%, median absolute prediction error (MAPE) of 17.38%, and percentages of PE within 20% (F, 55.69%) and 30% (F, 76.47%). However, all models performed inadequately in terms of the simulation-based normalized prediction distribution error, indicating unsatisfactory normality. Bayesian forecasting enhanced predictive performance, as observations were available. More observations are needed for model predictability to reach a stable state. The linear non-saturable binding equation had a higher predictive value than other protein binding models. The predictive abilities of most popPK models of VPA in children with epilepsy were unsatisfactory. The linear non-saturable binding equation is more suitable for modeling non-linearity. Moreover, Bayesian forecasting with observations improved model fitness.
多项研究调查了癫痫患儿丙戊酸(VPA)的群体药代动力学(popPK)。然而,这些模型在推断至其他临床环境中的预测性能尚未得到研究。因此,本研究评估了VPA儿科popPK模型的预测能力,并确定了蛋白质结合建模策略的潜在影响。在文献综述之后,分析了202例癫痫患儿的255个谷浓度数据集,以评估合格模型的预测性能。通过基于预测和模拟的诊断以及贝叶斯预测对外部预测能力进行评估。此外,还开发了五种具有不同蛋白质结合建模策略的popPK模型,以研究单结合位点模型、朗缪尔方程、剂量依赖性最大效应模型、线性非饱和结合方程和简单指数模型在模型预测能力上的差异。文献中确定了10个popPK模型。合并用药、体重、每日剂量和年龄是影响VPA清除率的四个最常见的协变量。Serrano等人提出的模型表现最佳,中位预测误差(MDPE)为1.40%,中位绝对预测误差(MAPE)为17.38%,误差百分比在20%(F,55.69%)和30%(F,76.47%)以内。然而,就基于模拟的标准化预测分布误差而言,所有模型的表现都不充分,表明正态性不令人满意。贝叶斯预测提高了预测性能,前提是有观测值可用。需要更多观测值才能使模型预测能力达到稳定状态。线性非饱和结合方程比其他蛋白质结合模型具有更高的预测价值。大多数癫痫患儿VPA的popPK模型的预测能力不令人满意。线性非饱和结合方程更适合对非线性进行建模。此外,有观测值的贝叶斯预测提高了模型拟合度。