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首页> 外文期刊>Clinical pharmacokinetics >Model-based, goal-oriented, individualised drug therapy. Linkage of population modelling, new 'multiple model' dosage design, bayesian feedback and individualised target goals.
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Model-based, goal-oriented, individualised drug therapy. Linkage of population modelling, new 'multiple model' dosage design, bayesian feedback and individualised target goals.

机译:基于模型的,面向目标的个性化药物治疗。人口建模,新的“多种模型”剂量设计,贝叶斯反馈和个性化目标目标之间的联系。

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This article examines the use of population pharmacokinetic models to store experiences about drugs in patients and to apply that experience to the care of new patients. Population models are the Bayesian prior. For truly individualised therapy, it is necessary first to select a specific target goal, such as a desired serum or peripheral compartment concentration, and then to develop the dosage regimen individualised to best hit that target in that patient. One must monitor the behaviour of the drug by measuring serum concentrations or other responses, hopefully obtained at optimally chosen times, not only to see the raw results, but to also make an individualised (Bayesian posterior) model of how the drug is behaving in that patient. Only then can one see the relationship between the dose and the absorption, distribution, effect and elimination of the drug, and the patient's clinical sensitivity to it; one must always look at the patient. Only by looking at both the patient and the model can it be judged whether the target goal was correct or needs to be changed. The adjusted dosage regimen is again developed to hit that target most precisely starting with the very next dose, not just for some future steady state. Nonparametric population models have discrete, not continuous, parameter distributions. These lead naturally into the multiple model method of dosage design, specifically to hit a desired target with the greatest possible precision for whatever past experience and present data are available on that drug--a new feature for this goal-oriented, model-based, individualised drug therapy. As clinical versions of this new approach become available from several centers, it should lead to further improvements in patient care, especially for bacterial and viral infections, cardiovascular therapy, and cancer and transplant situations.
机译:本文研究了群体药代动力学模型在存储患者药物使用方面的经验并将这些经验应用于新患者的护理中的使用。人口模型是贝叶斯先验。对于真正的个性化治疗,有必要首先选择一个特定的目标目标,例如所需的血清或外周区室浓度,然后制定个性化的剂量方案以最佳地达到该患者的目标。必须通过测量血清浓度或其他应答(希望在最佳选择的时间获得)来监测药物的行为,不仅要查看原始结果,还要建立关于药物在其中表现方式的个性化(贝叶斯后验)模型。患者。只有这样,才能看到剂量与药物的吸收,分布,作用和消除之间的关系,以及患者对其的临床敏感性。必须始终看着病人。只有同时查看患者和模型,才能判断目标目标是否正确或是否需要更改。再次制定了调整剂量方案,以从下一个剂量开始就最精确地达到该目标,而不仅仅是为了将来的某些稳定状态。非参数总体模型具有离散的而非连续的参数分布。这些方法自然导致了剂量设计的多模型方法,特别是无论该药物的过去经验和当前数据如何,都以尽可能最大的精度达到所需目标,这是该基于目标的,基于模型的,个体化药物治疗。随着这种新方法的临床版本可从多个中心获得,它应该导致患者护理的进一步改善,尤其是对于细菌和病毒感染,心血管治疗以及癌症和移植情况。

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