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Developing patient specific population pharmacokinetic models and comparing compartmental vs. non-compartmental analysis for the prediction of individual pharmacokinetic parameters.

机译:开发患者特定人群的药代动力学模型并比较隔室与非隔室分析,以预测各个药代动力学参数。

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One of the most challenging aspects facing clinical pharmacology is the optimization of patient dosage so that the desired therapeutic effect is maximized and toxic effects related to miss-dosage are minimized. The field of pharmacokinetics (PK) has generated several approaches towards overcoming this challenge such as the use of compartmental and non-compartmental analyses for estimating individual PK parameters that are used for determining dosage guidelines. Between these analyses the challenge of optimizing patient dosage is then translated towards a challenge in parameter estimation and model specification. Patient specific characteristics, for example, age, weight, or gender, are thought to be significant factors that may contribute to between subject PK variability. Several approaches have been developed in the field of population pharmacokinetics (PPK) to account for the relationship between such patient specific characteristics and PK parameters in hopes of explaining the observed variability among the target population. The two overall goals of this research study were: (1) Compare the techniques of compartmental versus non-compartmental approaches towards estimating individual PK parameters prior to their use in a population analysis. (2) Develop a PPK modeling methodology that will reduce the observed variability among PK parameter estimates by accounting for differences in patient factors which in turn will enable the optimization of patient dosage on an individual basis.;The approach that was undertaken for this study is related to that of the two-stage approach. In the first stage individual drug concentration time profiles are analyzed with the compartmental and non-compartmental analyses for the estimation of individual PK parameters. In the second stage we test two approaches as our population analyses that investigate a functional relationship between the estimated PK parameters and available patient specific characteristics. The first population analysis utilizes a principal component analysis of an expanded matrix of nonlinear patient specific characteristic terms and subsequent multiple linear regression. The second approach utilizes a multi-linear regression of logarithmic data.;Drug plasma concentration vs. time data sets collected for 61 individuals who were orally administered a 0.25 mg dose of the common hypnotic agent, Triazolam, were provided by our collaborator at the Tufts School of Medicine (Dr. David Greenblatt) in order to test our methodology. The compartmental and Non-compartmental analyses were observed to yield very similar results. No statistically significant reduction in the percent error of prediction was found in either of the population analyses. The results of the second population were simulated and gave no observable decrease in variability when compared with raw data.
机译:临床药理学面临的最具挑战性的方面之一是患者剂量的优化,以使所需的治疗效果最大化,与剂量错误相关的毒性作用最小化。药代动力学(PK)领域已经产生了克服这一挑战的几种方法,例如使用区室和非区室分析来估计用于确定剂量指南的各个PK参数。在这些分析之间,然后将优化患者剂量的挑战转化为参数估计和模型规格方面的挑战。患者的特定特征(例如年龄,体重或性别)被认为是可能导致受试者PK变异性的重要因素。在群体药代动力学(PPK)领域中已经开发了几种方法来解释此类患者特定特征和PK参数之间的关系,以期解释观察到的目标人群之间的变异性。这项研究的两个总体目标是:(1)比较隔室方法和非隔室方法的技术,以便在将其用于总体分析之前估计各个PK参数。 (2)开发一种PPK建模方法,通过考虑患者因素的差异来减少PK参数估计值中观察到的差异,从而可以根据个人情况优化患者剂量。与两阶段方法有关。在第一阶段,通过隔室和非隔室分析来分析各个药物浓度的时间曲线,以估计各个PK参数。在第二阶段中,我们在人口分析中测试了两种方法,以调查估计的PK参数与可用患者特定特征之间的功能关系。第一次总体分析利用非线性患者特定特征项的展开矩阵的主成分分析以及随后的多元线性回归。第二种方法是利用对数数据的多线性回归;由塔夫茨大学的合作者提供了61名口服0.25 mg常用催眠药Triazolam的个体的血浆血浆浓度与时间的数据集。医学院(David Greenblatt博士)以测试我们的方法。观察到隔室和非隔室分析产生非常相似的结果。在任何一项人口分析中,均未发现预测百分比误差的统计学显着降低。模拟了第二个种群的结果,与原始数据相比,变异性没有明显降低。

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