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A Hybrid Model Associating Population Pharmacokinetics with Machine Learning: A Case Study with Iohexol Clearance Estimation

Authors :
Alexandre Destere
Pierre Marquet
Charlotte Salmon Gandonnière
Anders Åsberg
Véronique Loustaud-Ratti
Paul Carrier
Stephan Ehrmann
Chantal Barin-Le Guellec
Aurélie Premaud
Jean-Baptiste Woillard
Source :
Clinical Pharmacokinetics. 61:1157-1165
Publication Year :
2022
Publisher :
Springer Science and Business Media LLC, 2022.

Abstract

Maximum a posteriori Bayesian estimation (MAP-BE) based on a limited sampling strategy and a population pharmacokinetic model is frequently used to estimate pharmacokinetic parameters in individuals, however with some uncertainty (bias). Recent works have shown that the performance in individual estimation or pharmacokinetic parameters can be improved by combining population pharmacokinetic and machine learning algorithms.The objective of this work was to investigate the use of a hybrid machine learning/population pharmacokinetic approach to improve individual iohexol clearance estimation.The reference iohexol clearance values were derived from 500 simulated profiles (samples collected between 0.1 and 24.7 h) using a population pharmacokinetic model we recently developed in Monolix and obtained using all the concentration timepoints available. Xgboost and glmnet algorithms able to predict the error of MAP-BE clearance estimates based on a limited sampling strategy (0.1 h, 1 h, and 9 h) versus reference values were developed in a training subset (75%) and were evaluated in a testing subset (25%) and in 36 real patients.The MAP-BE limited sampling strategy estimated clearance was corrected by the machine learning predicted error leading to a decrease in root mean squared error by 29% and 24%, and in the percentage of profiles with the mean prediction error out of the ± 20% bias by 60% and 40% in the external validation dataset for the glmnet and Xgboost machine learning algorithms, respectively. These results were attributable to a decrease in the eta-shrinkage (shrinkage for a MAP-BE limited sampling strategy = 32.4%, glmnet = 18.2%, and Xgboost = 19.4% in the external dataset).In conclusion, this hybrid algorithm represents a significant improvement in comparison to MAP-BE estimation alone.

Details

ISSN :
11791926 and 03125963
Volume :
61
Database :
OpenAIRE
Journal :
Clinical Pharmacokinetics
Accession number :
edsair.doi.dedup.....8f145f0a3405259ec484646c1fd2a896