Vigueras Guillermo, Muñoz-Gil Lucía, Reinisch Valerie, Pinto Joana T
Universidad Politécnica de Madrid, 28040, Madrid, Spain.
Center for Biomedical Technology, 28223, Madrid, Spain.
J Pharmacokinet Pharmacodyn. 2024 Dec 11;52(1):6. doi: 10.1007/s10928-024-09953-4.
Current treatment recommendations mainly rely on rule-based protocols defined from evidence-based clinical guidelines, which are difficult to adapt for high-risk patients such as those with renal impairment. Consequently, unsuccessful therapies and the occurrence of adverse drug reactions are common. Within the context of personalized medicine, that tries to deliver the right treatment dose to maximize efficacy and minimize toxicity, the concept of model-informed precision dosing proposes the use of mechanistic models, like physiologically based pharmacokinetic (PBPK) modeling, to predict drug regimes outcomes. Nonetheless, PBPK models have limited capability when computing patients' centric optimized drug doses. Consequently, reinforcement learning (RL) has been previously used to personalize drug dosage. In this work we propose the first PBPK and RL-based precision dosing system for an orally taken drug (benazepril) considering a virtual population of patients with renal disease. Population based PBPK modeling is used in combination with RL for obtaining patient tailored dose regimes. We also perform patient stratification and feature selection to better handle dose tailoring problems. Based on patients' characteristics with best predictive capabilities, benazepril dose regimes are obtained for a population with features' diversity. Obtained regimes are evaluated based on PK parameters considered. Results show that the proof-of-concept approach herein is capable of learning good dosing regimes for most patients. The use of a PopPBPK model allowed to account for intervariability of patient characteristics and be more inclusive considering also non-frequent patients. Impact analysis of patients' features reveals that renal impairment is the main driver affecting RL capabilities.
当前的治疗建议主要依赖于基于循证临床指南定义的规则协议,这些协议难以适用于高风险患者,如肾功能不全患者。因此,治疗失败和药物不良反应的发生很常见。在试图提供正确治疗剂量以最大化疗效和最小化毒性的精准医疗背景下,模型指导的精准给药概念提出使用机制模型,如基于生理的药代动力学(PBPK)建模,来预测药物治疗结果。然而,PBPK模型在计算以患者为中心的优化药物剂量时能力有限。因此,强化学习(RL)此前已被用于个性化药物剂量。在这项工作中,我们提出了首个基于PBPK和RL的精准给药系统,用于口服药物(贝那普利),该系统考虑了肾病患者的虚拟群体。基于群体的PBPK建模与RL结合使用,以获得针对患者的定制剂量方案。我们还进行患者分层和特征选择,以更好地处理剂量定制问题。基于具有最佳预测能力的患者特征,为具有特征多样性的群体获得贝那普利剂量方案。根据所考虑的药代动力学参数对获得的方案进行评估。结果表明,本文中的概念验证方法能够为大多数患者学习良好的给药方案。使用PopPBPK模型能够考虑患者特征的个体差异,并且在考虑非常见患者时更具包容性。患者特征的影响分析表明,肾功能不全是影响RL能力的主要因素。