Pharmacokinetic-Pharmacodynamic Modelling and Adaptive Dosing Intelligence: AI-Driven Platforms for Patient-Specific Drug Dosing Optimisation
Keywords:
pharmacokinetic-pharmacodynamic modelling, adaptive dosing intelligence, platforms, patient-specific drug dosing optimisation, machine learningAbstract
Modern healthcare is moving towards individualized or personalized medical interventions in many areas, and personalized drug dosing is no exception. Personalized drug dosing is the concept of administering a dosage that is specifically tailored to the pharmacokinetics of an individual and further adjusted to reach a personalized target. Personalized dosages can optimize the benefit of the treatment while minimizing adverse drug reactions.Downloads
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