首页> 美国卫生研究院文献>Frontiers in Physiology >Model Based Targeting of IL-6-Induced Inflammatory Responses in Cultured Primary Hepatocytes to Improve Application of the JAK Inhibitor Ruxolitinib
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Model Based Targeting of IL-6-Induced Inflammatory Responses in Cultured Primary Hepatocytes to Improve Application of the JAK Inhibitor Ruxolitinib

机译:基于模型的培养的原代肝细胞中IL-6诱导的炎症反应的靶向以改善JAK抑制剂鲁索替尼的应用

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摘要

IL-6 is a central mediator of the immediate induction of hepatic acute phase proteins (APP) in the liver during infection and after injury, but increased IL-6 activity has been associated with multiple pathological conditions. In hepatocytes, IL-6 activates JAK1-STAT3 signaling that induces the negative feedback regulator SOCS3 and expression of APPs. While different inhibitors of IL-6-induced JAK1-STAT3-signaling have been developed, understanding their precise impact on signaling dynamics requires a systems biology approach. Here we present a mathematical model of IL-6-induced JAK1-STAT3 signaling that quantitatively links physiological IL-6 concentrations to the dynamics of IL-6-induced signal transduction and expression of target genes in hepatocytes. The mathematical model consists of coupled ordinary differential equations (ODE) and the model parameters were estimated by a maximum likelihood approach, whereas identifiability of the dynamic model parameters was ensured by the Profile Likelihood. Using model simulations coupled with experimental validation we could optimize the long-term impact of the JAK-inhibitor Ruxolitinib, a therapeutic compound that is quickly metabolized. Model-predicted doses and timing of treatments helps to improve the reduction of inflammatory APP gene expression in primary mouse hepatocytes close to levels observed during regenerative conditions. The concept of improved efficacy of the inhibitor through multiple treatments at optimized time intervals was confirmed in primary human hepatocytes. Thus, combining quantitative data generation with mathematical modeling suggests that repetitive treatment with Ruxolitinib is required to effectively target excessive inflammatory responses without exceeding doses recommended by the clinical guidelines.
机译:IL-6是感染期间和损伤后肝脏中肝急性期蛋白(APP)立即诱导的主要介质,但是IL-6活性增加与多种病理状况有关。在肝细胞中,IL-6激活JAK1-STAT3信号传导,从而诱导负反馈调节因子SOCS3和APP的表达。尽管已经开发出多种不同的IL-6诱导的JAK1-STAT3信号转导抑制剂,但要了解它们对信号动力学的精确影响,需要采用系统生物学方法。在这里,我们介绍了IL-6诱导JAK1-STAT3信号传导的数学模型,该模型定量地将生理IL-6浓度与IL-6诱导的信号转导和肝细胞中靶基因表达的动力学联系起来。数学模型由耦合的常微分方程(ODE)组成,并且通过最大似然法估计模型参数,而通过轮廓似然法确保动态模型参数的可识别性。使用模型仿真和实验验证,我们可以优化JAK抑制剂Ruxolitinib(一种快速代谢的治疗化合物)的长期影响。模型预测的剂量和治疗时间有助于改善原代小鼠肝细胞中炎性APP基因表达的降低,接近再生条件下观察到的水平。在原代人肝细胞中证实了通过在最佳时间间隔进行多次治疗来提高抑制剂疗效的概念。因此,将定量数据生成与数学建模相结合表明,需要用鲁索替尼进行重复治疗才能有效地针对过度的炎症反应,而不会超出临床指南建议的剂量。

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