Nonparametric identification of population models: an MCMC approach.

IEEE Trans Biomed Eng

Clinical Pharmacokinetics, Modelling and Simulation Department, GlaxoSmithKline Research Centre, Verona 37100, Italy.

Published: January 2008

The paper deals with the nonparametric identification of population models, that is models that explain jointly the behavior of different subjects drawn from a population, e.g., responses of different patients to a drug. The average response of the population and the individual responses are modeled as continuous-time Gaussian processes with unknown hyperparameters. Within a Bayesian paradigm, the posterior expectation and variance of both the average and individual curves are computed by means of a Markov Chain Monte Carlo scheme. The model and the estimation procedure are tested on both simulated and experimental pharmacokinetic data.

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http://dx.doi.org/10.1109/TBME.2007.902240DOI Listing

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