...
首页> 外文期刊>Frontiers in Pharmacology >Model-Based Biomarker Selection for Dose Individualization of Tyrosine-Kinase Inhibitors
【24h】

Model-Based Biomarker Selection for Dose Individualization of Tyrosine-Kinase Inhibitors

机译:酪氨酸激酶抑制剂的剂量个体化基于模型的生物标志物选择

获取原文
           

摘要

Tyrosine-kinase inhibitors (TKIs) demonstrate high inter-individual variability with respect to safety and efficacy and would therefore benefit from dose or schedule adjustments. This study investigated the efficacy, safety, and economical aspects of alternative dosing options for sunitinib in gastro-intestinal stromal tumors (GIST) and axitinib in metastatic renal cell carcinoma (mRCC). Dose individualization based on drug concentration, adverse effects, and sVEGFR-3 was explored using a modeling framework connecting pharmacokinetic and pharmacodynamic models, as well as overall survival. Model-based simulations were performed to investigate four different scenarios: (I) the predicted value of high-dose pulsatile schedules to improve clinical outcomes as compared to regular daily dosing, (II) the potential of biomarkers for dose individualizations, such as drug concentrations, toxicity measurements, and the biomarker sVEGFR-3, (III) the cost-effectiveness of biomarker-guided dose-individualizations, and (IV) model-based dosing approaches versus standard sample-based methods to guide dose adjustments in clinical practice. Simulations from the axitinib and sunitinib frameworks suggest that weekly or once every two weeks high-dosing result in lower overall survival in patients with mRCC and GIST, compared to continuous daily dosing. Moreover, sVEGFR-3 appears a safe and cost-effective biomarker to guide dose adjustments and improve overall survival (€36 784.- per QALY). Model-based estimations were for biomarkers in general found to correctly predict dose adjustments similar to or more accurately than single clinical measurements and might therefore guide dose adjustments. A simulation framework represents a rapid and resource saving method to explore various propositions for dose and schedule adjustments of TKIs, while accounting for complicating factors such as circulating biomarker dynamics and inter-or intra-individual variability.
机译:酪氨酸 - 激酶抑制剂(TKIs)表明了关于安全性和功效的高间间变异性,因此将受益于剂量或调整调整。本研究调查了户外剂量选择在胃肠中间肿瘤(GIST)和胰岛素转移肾细胞癌(MRCC)中的偶然剂量选择的疗效,安全性和经济方面。使用建模框架连接药代动力学和药物动力学模型以及整体存活,探讨了基于药物浓度,不良反应和SVEGFR-3的剂量个体化。进行基于模型的模拟以研究四种不同的情景:(i)高剂量脉冲调度的预测值,以改善临床结果,与常规日常剂量相比,(ii)剂量个体化的潜力,例如药物浓度,毒性测量和生物标志物SVEGFR-3,(iii)生物标记剂量 - 个体化的成本效益,(IV)基于模型的给药方法与标准样品的基于方法,以指导临床实践中的剂量调整。 Axitinib和Sunitinib框架的模拟表明,与连续日常定量给药相比,每两周一次或每两周一次,每两周患者患者的总生存率较低。此外,SVEGFR-3似乎是一种安全且具有成本效益的生物标志物,用于指导剂量调整,并改善整体生存(€36 784.-每QALY)。基于模型的估计对于生物标志物,通常发现,正确地预测与单一临床测量相似或更准确地的剂量调节,因此可能导向剂量调节。仿真框架代表了一种快速和资源节约的方法,用于探讨TKI的剂量和调度调整的各种命题,同时占循环生物标志物动力学和间跨或内部变异性的复杂因素。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号