Swiss Medical Weekly (Apr 2024)

Pharmacometric in silico studies used to facilitate a national dose standardisation process in neonatology – application to amikacin

  • Verena Gotta,
  • Julia Anna Bielicki,
  • Paolo Paioni,
  • Chantal Csajka,
  • Dominic Stefan Bräm,
  • Christoph Berger,
  • Elisabeth Giger,
  • Michael Buettcher,
  • Klara M. Posfay-Barbe,
  • John van den Anker,
  • Marc Pfister

DOI
https://doi.org/10.57187/s.3632
Journal volume & issue
Vol. 154, no. 4

Abstract

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BACKGROUND AND AIMS: Pharmacometric in silico approaches are frequently applied to guide decisions concerning dosage regimes during the development of new medicines. We aimed to demonstrate how such pharmacometric modelling and simulation can provide a scientific rationale for optimising drug doses in the context of the Swiss national dose standardisation project in paediatrics using amikacin as a case study. METHODS: Amikacin neonatal dosage is stratified by post-menstrual age (PMA) and post-natal age (PNA) in Switzerland and many other countries. Clinical concerns have been raised for the subpopulation of neonates with a post-menstrual age of 30–35 weeks and a post-natal age of 0–14 days (“subpopulation of clinical concern”), as potentially oto-/nephrotoxic trough concentrations (Ctrough >5 mg/l) were observed with a once-daily dose of 15 mg/kg. We applied a two-compartmental population pharmacokinetic model (amikacin clearance depending on birth weight and post-natal age) to real-world demographic data from 1563 neonates receiving anti-infectives (median birth weight 2.3 kg, median post-natal age six days) and performed pharmacometric dose-exposure simulations to identify extended dosing intervals that would ensure non-toxic Ctrough (Ctrough 80%. CONCLUSION: Pharmacometric in silico studies using high-quality real-world demographic data can provide a scientific rationale for national paediatric dose optimisation. This may increase clinical acceptance of fine-tuned standardised dosing recommendations and support their implementation, including in vulnerable subpopulations.