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双相情感障碍人群中锂盐群体药代动力学模型的外部评估

External Evaluation of Population Pharmacokinetics Models of Lithium in the Bipolar Population.

作者信息

Aurélie Lereclus, Andréa Boniffay, Gauvind Kallée, Olivier Blin, Raoul Belzeaux, Dayan Frédéric, Sylvain Benito, Romain Guilhaumou

机构信息

Institut de Neurosciences des Systèmes, Aix Marseille Université, Inserm UMR 1106, 13385 Marseille, France.

EXACTCURE, 06000 Nice, France.

出版信息

Pharmaceuticals (Basel). 2023 Nov 18;16(11):1627. doi: 10.3390/ph16111627.

Abstract

Lithium has been used in the treatment of bipolar disorder for several decades. Treatment optimization is recommended for this drug, due to its narrow therapeutic range and a large pharmacokinetics (PK) variability. In addition to therapeutic drug monitoring, attempts have been made to predict individual lithium doses using population pharmacokinetics (popPK) models. This study aims to assess the clinical applicability of published lithium popPK models by testing their predictive performance on two different external datasets. Available PopPK models were identified and their predictive performance was determined using a clinical dataset (46 patients/samples) and the literature dataset (89 patients/samples). The median prediction error (PE) and median absolute PE were used to assess bias and inaccuracy. The potential factors influencing model predictability were also investigated, and the results of both external evaluations compared. Only one model met the acceptability criteria for both datasets. Overall, there was a lack of predictability of models; median PE and median absolute PE, respectively, ranged from -6.6% to 111.2% and from 24.4% to 111.2% for the literature dataset, and from -4.5% to 137.6% and from 24.9% to 137.6% for the clinical dataset. Most models underpredicted the observed concentrations (7 out of 10 models presented a negative bias). Renal status was included as a covariate of lithium's clearance in only two models. To conclude, most of lithium's PopPK models had limited predictive performances related to the absence of covariates of interest included, such as renal status. A solution to this problem could be to improve the models with methodologies such as metamodeling. This could be useful in the perspective of model-informed precision dosing.

摘要

锂用于治疗双相情感障碍已有数十年。由于其治疗窗狭窄且药代动力学(PK)变异性大,建议对该药物进行治疗优化。除了治疗药物监测外,人们还尝试使用群体药代动力学(popPK)模型来预测个体锂剂量。本研究旨在通过在两个不同的外部数据集上测试已发表的锂popPK模型的预测性能,评估其临床适用性。识别可用的PopPK模型,并使用临床数据集(46例患者/样本)和文献数据集(89例患者/样本)确定其预测性能。使用中位数预测误差(PE)和中位数绝对PE来评估偏差和不准确性。还研究了影响模型可预测性的潜在因素,并比较了两个外部评估的结果。只有一个模型在两个数据集上均符合可接受标准。总体而言,模型缺乏可预测性;文献数据集的中位数PE和中位数绝对PE分别为-6.6%至111.2%和24.4%至111.2%,临床数据集的中位数PE和中位数绝对PE分别为-4.5%至137.6%和24.9%至137.6%。大多数模型低估了观察到的浓度(10个模型中有7个呈现负偏差)。只有两个模型将肾功能状态作为锂清除率的协变量纳入。总之,大多数锂的PopPK模型由于未纳入感兴趣的协变量(如肾功能状态),预测性能有限。解决这个问题的一个办法可能是使用元建模等方法改进模型。从模型指导的精准给药角度来看,这可能会很有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/89b9/10674621/cbda46632261/pharmaceuticals-16-01627-g001.jpg

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