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早产儿精准剂量给予咖啡因的一小步:已发表群体药代动力学模型的外部评估。

A small step toward precision dosing of caffeine in preterm infants: An external evaluation of published population pharmacokinetic models.

机构信息

Pharmaceutical Sciences Research Center, Department of Pharmacy, Children's Hospital of Nanjing Medical University, Nanjing 210008, China; School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University, Nanjing 211198, China.

Neonatal Intensive Care Unit, Children's Hospital of Nanjing Medical University, Nanjing 210008, China.

出版信息

Eur J Pharm Biopharm. 2024 Nov;204:114484. doi: 10.1016/j.ejpb.2024.114484. Epub 2024 Sep 7.

Abstract

BACKGROUND

Several population pharmacokinetic (PopPK) models of caffeine in preterm infants have been published, but the extrapolation of these models to facilitate model-informed precision dosing (MIPD) in clinical practice is uncertain. This study aimed to comprehensively evaluate their predictive performance using an external, independent dataset.

METHODS

Data used for external evaluation were based on an independent cohort of preterm infants. Currently available PopPK models for caffeine in preterm infants were identified and re-established. Prediction- and simulation-based diagnostics were used to assess model predictability. The influence of prior information was assessed using Bayesian forecasting.

RESULTS

120 plasma samples from 76 preterm infants were included in the evaluation dataset. Twelve PopPK models of caffeine in preterm infants were re-established based on our previously published study. Although two models showed superior predictive performance, none of the 12 PopPK models met all the clinical acceptance criteria of these external evaluation items. Besides, the external predictive performances of most models were unsatisfactory in prediction- and simulation-based diagnostics. Nevertheless, the application of Bayesian forecasting significantly improved the predictive performance, even with only one prior observation.

CONCLUSIONS

Two models that included the most covariates had the best predictive performance across all external assessments. Inclusion of different covariates, heterogeneity of preterm infant characteristics, and different study designs influenced predictive performance. Thorough evaluation is needed before these PopPK models can be implemented in clinical practice. The implementation of MIPD for caffeine in preterm infants could benefit from the combination of PopPK models and Bayesian forecasting as a helpful tool.

摘要

背景

已经发表了几个关于早产儿咖啡因的群体药代动力学(PopPK)模型,但这些模型在临床上用于辅助模型指导的精准给药(MIPD)的外推尚不确定。本研究旨在使用外部独立数据集全面评估其预测性能。

方法

用于外部评估的数据基于一个独立的早产儿队列。鉴定并重新建立目前可用的早产儿咖啡因 PopPK 模型。使用预测和模拟基于的诊断来评估模型的可预测性。使用贝叶斯预测评估先验信息的影响。

结果

纳入评估数据集的 76 名早产儿的 120 个血浆样本。基于我们之前的研究,重新建立了 12 个早产儿咖啡因的 PopPK 模型。虽然两个模型表现出优越的预测性能,但在所有这些外部评估项目中,没有一个 PopPK 模型符合所有临床可接受标准。此外,大多数模型在预测和模拟基于的诊断中的外推预测性能都不理想。然而,贝叶斯预测的应用显著提高了预测性能,即使只有一个先验观察值。

结论

两个纳入了最多协变量的模型在所有外部评估中表现出了最佳的预测性能。纳入不同的协变量、早产儿特征的异质性和不同的研究设计影响了预测性能。在这些 PopPK 模型能够在临床实践中实施之前,需要进行彻底的评估。作为一种有用的工具,将 PopPK 模型和贝叶斯预测结合起来,可能会使早产儿咖啡因的 MIPD 实施受益。

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