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Nonparametric identification of pharmacokinetic population models via Gaussian processes

Authors:De Nicolao Giuseppe, Universita' di Pavia, Italy
Neve Marta, Universita' di Pavia, Italy
Marchesi Laura, Universita' di Pavia, Italy
Topic:8.2 Modelling & Control of Biomedical Systems
Session:Identification of Biomedical System Dynamics
Keywords: nonparametric identification, estimation theory, pharmacokinetic data, splines, neural networks, regularization

Abstract

Population models are used to describe the behaviour of differentsubjects belonging to a population and play an important role in drug pharmacokinetics. A nonparametric identification scheme is proposed in which both the average population response and the individual ones are modelled as Gaussian stochastic processes. Assuming that the average curve is an integrated Wiener process, it is shown that its estimate is a cubic spline. An Empirical Bayes (EB) algorithm for estimating both the typical and the individual curves is worked out. The model is tested on xenobiotics pharmacokinetic data.