Published March 16, 2024
| Version v1
Journal article
Optimization of Ganciclovir and Valganciclovir Starting Dose in Children by Machine Learning
Contributors
Others:
- Pharmacologie et Transplantation (P&T) ; CHU Limoges-Institut National de la Santé et de la Recherche Médicale (INSERM)-OmégaHealth (ΩHealth) ; Université de Limoges (UNILIM)-Université de Limoges (UNILIM)
- CHU Sainte Justine [Montréal]
- Université de Montréal (UdeM)
- Institut de recherche en santé, environnement et travail (Irset) ; Université d'Angers (UA)-Université de Rennes (UR)-École des Hautes Études en Santé Publique [EHESP] (EHESP)-Institut National de la Santé et de la Recherche Médicale (INSERM)-Structure Fédérative de Recherche en Biologie et Santé de Rennes (Biosit : Biologie - Santé - Innovation Technologique)
- École des Hautes Études en Santé Publique [EHESP] (EHESP)
- Centre Hospitalier Universitaire de Rennes [CHU Rennes] = Rennes University Hospital [Pontchaillou]
- Oslo University Hospital [Oslo]
- University of Oslo (UiO)
- Université Côte d'Azur (UniCA)
- Departement de Pharmacologie Clinique ; Université Côte d'Azur, CHU de Nice ; UNS-UCA-UNS-UCA
- Pharmacology & Transplantation, INSERM U1248, Université de Limoges, Limoges, France.
- Service de Pharmacologie, toxicologie et pharmacovigilance [CHU Limoges] ; CHU Limoges
Description
Background and objectives: Ganciclovir (GCV) and valganciclovir (VGCV) show large interindividual pharmacokinetic variability, particularly in children. The objectives of this study were (1) to develop machine learning (ML) algorithms trained on simulated pharmacokinetics profiles obtained by Monte Carlo simulations to estimate the best ganciclovir or valganciclovir starting dose in children and (2) to compare its performances on real-world profiles to previously published equation derived from literature population pharmacokinetic (POPPK) models achieving about 20% of profiles within the target.Materials and methods: The pharmacokinetic parameters of four literature POPPK models in addition to the World Health Organization (WHO) growth curve for children were used in the mrgsolve R package to simulate 10,800 pharmacokinetic profiles. ML algorithms were developed and benchmarked to predict the probability to reach the steady-state, area-under-the-curve target (AUC0-24 within 40-60 mg × h/L) based on demographic characteristics only. The best ML algorithm was then used to calculate the starting dose maximizing the target attainment. Performances were evaluated for ML and literature formula in a test set and in an external set of 32 and 31 actual patients (GCV and VGCV, respectively).Results: A combination of Xgboost, neural network, and random forest algorithms yielded the best performances and highest target attainment in the test set (36.8% for GCV and 35.3% for the VGCV). In actual patients, the best GCV ML starting dose yielded the highest target attainment rate (25.8%) and performed equally for VGCV with the Franck model formula (35.3% for both).Conclusion: The ML algorithms exhibit good performances in comparison with previously validated models and should be evaluated prospectively.
Abstract
International audienceAdditional details
Identifiers
- URL
- https://unilim.hal.science/hal-04508999
- URN
- urn:oai:HAL:hal-04508999v2
Origin repository
- Origin repository
- UNICA