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首页> 外文期刊>Therapeutic Drug Monitoring >Some comments and suggestions concerning population pharmacokinetic modeling, especially of digoxin, and its relation to clinical therapy
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Some comments and suggestions concerning population pharmacokinetic modeling, especially of digoxin, and its relation to clinical therapy

机译:关于人群药代动力学模型,尤其是地高辛的动力学模型及其与临床治疗的关系的一些评论和建议

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Population pharmacokinetic and dynamic modeling is often employed to analyze data of steady-state trough serum digoxin concentrations in the course of what is frequently regarded as routine therapeutic drug monitoring (TDM). Such a monitoring protocol is extremely uninformative. It permits only the estimation of a single parameter of a 1-compartment model, such as clearance. The use of D-optimal design strategies permits much more information to be obtained, employing models having a really meaningful structure. Strategies and protocols for routine TDM policies greatly need to be improved, incorporating these principles of optimal design. Software for population pharmacokinetic modeling has been dominated by NONMEM. However, because NONMEM is a parametric method, it must assume a shape for the model parameter distributions. If the assumption is not correct, the model will be in error, and the most likely results given the raw data will not be obtained. In addition, the likelihood as computed by NONMEM is only approximate, not exact. This impairs statistical consistency and reduces statistical efficiency and the resulting precision of model parameter estimates. Other parametric methods are superior, as they provide exact likelihoods. However, they still suffer from the constraints of assuming the shape of the model parameter distributions. Nonparametric methods are more flexible. One need not make any assumptions about the shape of the parameter distributions. Nonparametric methods also provide exact likelihoods and are statistically consistent, efficient, and precise. They also permit maximally precise dosage regimens to be developed for patients using multiple model dosage design, something parametric modeling methods cannot do. Laboratory assay errors are better described by the reciprocal of the assay variance of each measurement rather than by coefficient of variation. This is easy to do and permits more precise models to be made. This also permits estimation of assay error separately from the other sources of uncertainty in the clinical environment. This is most useful scientifically. Digoxin has at least 2-compartment behavior. Its pharmacologic and clinical effects correlate not with serum digoxin concentrations but with those in the peripheral nonserum compartment. Some illustrative clinical examples are discussed. It seems that digitalis therapy, guided by TDM and our 2 compartment models based on that of Reuning et al, can convert at least some patients with atrial fibrillation and flutter to regular sinus rhythm. Investigators have often used steady-state trough concentrations only to make a 1-compartment model and have sought only to predict future steady-state trough concentrations. Much more than this can be done, and clinical care can be much improved. Further work along these lines is greatly to be desired.
机译:在通常被视为常规治疗药物监测(TDM)的过程中,通常采用群体药代动力学和动态模型来分析稳态谷浓度的地高辛浓度数据。这样的监视协议非常无用。它仅允许估算一室模型的单个参数,例如间隙。使用具有真正有意义的结构的模型,D最优设计策略的使用允许获得更多的信息。常规TDM策略的策略和协议需要极大地加以改进,并结合这些最佳设计原则。用于群体药代动力学建模的软件已由NONMEM主导。但是,由于NONMEM是参数方法,因此必须为模型参数分布采用形状。如果假设不正确,则该模型将是错误的,并且将无法获得给定原始数据的最可能结果。另外,由NONMEM计算的似然度只是近似值,而不是精确值。这削弱了统计一致性,并降低了统计效率和模型参数估计值的精度。其他参数化方法则更为优越,因为它们提供了确切的可能性。但是,它们仍然受到假设模型参数分布形状的限制。非参数方法更灵活。无需对参数分布的形状进行任何假设。非参数方法还提供了精确的可能性,并且在统计上是一致的,有效的和精确的。它们还允许使用多种模型剂量设计为患者开发最大精确的剂量方案,这是参数化建模方法无法做到的。实验室测定误差可以通过每次测量的测定方差的倒数而不是变异系数来更好地描述。这很容易做到,并允许制作更精确的模型。这也允许与临床环境中其他不确定性来源分开估计测定误差。这在科学上最有用。地高辛具有至少2隔室的行为。它的药理和临床作用与血清地高辛的浓度无关,而与周围非血清区室的浓度有关。讨论了一些说明性的临床例子。似乎在TDM和基于Reuning等人的2室模型的指导下的洋地黄疗法可以使至少一些患有房颤和扑动的患者转变为规则的窦性心律。研究人员通常仅使用稳态谷浓度来建立1舱模型,并且仅试图预测未来的稳态谷浓度。不仅可以做到这一点,而且可以大大改善临床护理。迫切希望沿着这些思路开展进一步的工作。

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