Modeling Pharmacokinetics in Individual Patients Using Therapeutic Drug Monitoring and Artificial Population Quasi-Models: A Study with Piperacillin

Author:

Karvaly Gellért Balázs1ORCID,Vincze István1ORCID,Neely Michael Noel2ORCID,Zátroch István3ORCID,Nagy Zsuzsanna4,Kocsis Ibolya1,Kopitkó Csaba3ORCID

Affiliation:

1. Department of Laboratory Medicine, Semmelweis University, 1089 Budapest, Hungary

2. Laboratory of Applied Pharmacokinetics and Bioinformatics, The Saban Research Institute, University of Southern California, Los Angeles, CA 90027, USA

3. Central Department of Anaesthesiology and Intensive Care, Uzsoki Teaching Hospital, 1145 Budapest, Hungary

4. Central Laboratory, Uzsoki Teaching Hospital, 1145 Budapest, Hungary

Abstract

Population pharmacokinetic (pop-PK) models constructed for model-informed precision dosing often have limited utility due to the low number of patients recruited. To augment such models, an approach is presented for generating fully artificial quasi-models which can be employed to make individual estimates of pharmacokinetic parameters. Based on 72 concentrations obtained in 12 patients, one- and two-compartment pop-PK models with or without creatinine clearance as a covariate were generated for piperacillin using the nonparametric adaptive grid algorithm. Thirty quasi-models were subsequently generated for each model type, and nonparametric maximum a posteriori probability Bayesian estimates were established for each patient. A significant difference in performance was found between one- and two-compartment models. Acceptable agreement was found between predicted and observed piperacillin concentrations, and between the estimates of the random-effect pharmacokinetic variables obtained using the so-called support points of the pop-PK models or the quasi-models as priors. The mean squared errors of the predictions made using the quasi-models were similar to, or even considerably lower than those obtained when employing the pop-PK models. Conclusion: fully artificial nonparametric quasi-models can efficiently augment pop-PK models containing few support points, to make individual pharmacokinetic estimates in the clinical setting.

Publisher

MDPI AG

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