Nonlinear protein binding of phenytoin in clinical practice: Development and validation of a mechanistic prediction model
Publication year
2019Source
British Journal of Clinical Pharmacology, 85, 10, (2019), pp. 2360-2368ISSN
Publication type
Article / Letter to editor

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Organization
Clinical Pharmacy
Journal title
British Journal of Clinical Pharmacology
Volume
vol. 85
Issue
iss. 10
Page start
p. 2360
Page end
p. 2368
Subject
Radboudumc 4: lnfectious Diseases and Global Health RIHS: Radboud Institute for Health SciencesAbstract
AIMS: To individualize treatment, phenytoin doses are adjusted based on free concentrations, either measured or calculated from total concentrations. As a mechanistic protein binding model may more accurately reflect the protein binding of phenytoin than the empirical Winter-Tozer equation that is routinely used for calculation of free concentrations, we aimed to develop and validate a mechanistic phenytoin protein binding model. METHODS: Data were extracted from routine clinical practice. A mechanistic drug protein binding model was developed using nonlinear mixed effects modelling in a development dataset. The predictive performance of the mechanistic model was then compared with the performance of the Winter-Tozer equation in 5 external datasets. RESULTS: We found that in the clinically relevant concentration range, phenytoin protein binding is not only affected by serum albumin concentrations and presence of severe renal dysfunction, but is also concentration dependent. Furthermore, the developed mechanistic model outperformed the Winter-Tozer equation in 4 out of 5 datasets in predicting free concentrations in various populations. CONCLUSIONS: Clinicians should be aware that the free fraction changes when phenytoin exposure changes. A mechanistic binding model may facilitate prediction of free phenytoin concentrations from total concentrations, for example for dose individualization in the clinic.
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- Academic publications [203812]
- Faculty of Medical Sciences [80326]
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