Subgroup identification-based model selection to improve the predictive performance of individualized dosing

Journal of Pharmacokinetics and Pharmacodynamics(2024)

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摘要
Currently, model-informed precision dosing uses one population pharmacokinetic model that best fits the target population. We aimed to develop a subgroup identification-based model selection approach to improve the predictive performance of individualized dosing, using vancomycin in neonates/infants as a test case. Data from neonates/infants with at least one vancomycin concentration was randomly divided into training and test dataset. Population predictions from published vancomycin population pharmacokinetic models were calculated. The single best-performing model based on various performance metrics, including median absolute percentage error (APE) and percentage of predictions within 20
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关键词
Model-informed precision dosing,Population pharmacokinetic model,k-medoids clustering,Principal component analysis,Genetic algorithm
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