Predicting Drug Concentration‐Time Profiles in Multiple CNS Compartments Using a Comprehensive Physiologically‐Based Pharmacokinetic Model

Drug development targeting the central nervous system (CNS) is challenging due to poor predictability of drug concentrations in various CNS compartments. We developed a generic physiologically based pharmacokinetic (PBPK) model for prediction of drug concentrations in physiologically relevant CNS co...

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Veröffentlicht in:CPT: pharmacometrics and systems pharmacology 2017-11, Vol.6 (11), p.765-777
Hauptverfasser: Yamamoto, Yumi, Välitalo, Pyry A., Huntjens, Dymphy R., Proost, Johannes H., Vermeulen, An, Krauwinkel, Walter, Beukers, Margot W., van den Berg, Dirk‐Jan, Hartman, Robin, Wong, Yin Cheong, Danhof, Meindert, van Hasselt, John G. C., de Lange, Elizabeth C. M.
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Sprache:eng
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Zusammenfassung:Drug development targeting the central nervous system (CNS) is challenging due to poor predictability of drug concentrations in various CNS compartments. We developed a generic physiologically based pharmacokinetic (PBPK) model for prediction of drug concentrations in physiologically relevant CNS compartments. System‐specific and drug‐specific model parameters were derived from literature and in silico predictions. The model was validated using detailed concentration‐time profiles from 10 drugs in rat plasma, brain extracellular fluid, 2 cerebrospinal fluid sites, and total brain tissue. These drugs, all small molecules, were selected to cover a wide range of physicochemical properties. The concentration‐time profiles for these drugs were adequately predicted across the CNS compartments (symmetric mean absolute percentage error for the model prediction was
ISSN:2163-8306
2163-8306
DOI:10.1002/psp4.12250