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首页> 外文期刊>International journal of clinical pharmacology and therapeutics >Efficient strategy for obtaining reliable pharmacokinetic parameters in population compartmental approaches
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Efficient strategy for obtaining reliable pharmacokinetic parameters in population compartmental approaches

机译:在人群区隔方法中获得可靠药代动力学参数的有效策略

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摘要

Objective: This study aimed to suggest efficient strategies for obtaining reliable pharmacokinetic (PK) parameters in population compartmental approach (PCA) a early-phase or resource-limited clinical trials with limited data. Methods: This study employed plasma concentration of olanzapine, an antipsychotic drug, from a bioequivalence study. To assess bias and precision of PK parameters that were estimated from limited data, this study utilized simulations with the generation of small-size datasets (SSD) and minimal-sampling datasets (MSD) that consisted of limited volunteers and PK samplings per volunteer, respectively. Results: Clearance (CL) estimates were the most robust, volume of the central (Vc) and peripheral compartment (Vp) were moderately affected, and absorption rate constant (Ka) and intercompartmental clearance (Q) were very sensitive with limited dataset. MSD had more impact on the bias and precision of PK parameter estimation than SSD. Conclusions: Performance of PK parameter estimation evaluated by bias and precision from simulation datasets was better in SSD than MSD. This finding implies that collecting more PK samplings is a more efficient strategy than recruiting more volunteers in order to obtain informative results in performing PCA.
机译:目的:本研究旨在为在有限数据的早期阶段或资源有限的临床试验中提出有效的策略,以在人群区隔方法(PCA)中获得可靠的药代动力学(PK)参数。方法:该研究采用了一项生物等效性研究中的一种抗精神病药物奥氮平的血浆浓度。为了评估从有限数据估计的PK参数的偏倚和精度,本研究利用模拟生成了小型数据集(SSD)和最小采样数据集(MSD),该数据集分别由有限的志愿者和每个志愿者的PK采样组成。结果:清除率(CL)估计最可靠,中央(Vc)和外围区室(Vp)的体积受到中等影响,并且吸收率常数(Ka)和室间清除率(Q)对有限数据集非常敏感。与SSD相比,MSD对PK参数估计的偏差和精度影响更大。结论:通过SSD的偏差和精度评估的PK参数估计性能在SS​​D中比MSD更好。这一发现意味着,与招募更多的志愿者以获取执行PCA的有益结果相比,收集更多的PK采样是一种更有效的策略。

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