Handling Non-Negativity in Deconvolution of Physiological Signals: A Nonlinear Stochastic Approach

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作者
Gianluigi Pillonetto
Giovanni Sparacino
Claudio Cobelli
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[1] Università degli Studi di Padova,Dipartimento di Ingegneria dell’Informazione
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Random walk; Regularization; Markov chain; Monte Carlo;
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摘要
A stochastic interpretation of Tikhonov regularization has been recently proposed to attack some open problems of deconvolution when dealing with physiological systems, i.e., in addition to ill-conditioning, infrequent and nonuniform sampling and necessity of having credible confidence intervals. However, the possible violation of the non-negativity constraint cannot be dealt with on firm statistical grounds, since the model of the unknown signal is compatible with negative realizations. In this paper, we propose a new model of the unknown input which excludes negative values. The model is embedded within a Bayesian estimation framework to calculate, by resorting to a Markov chain Monte Carlo algorithm, a nonlinear estimate of the unknown input given by its a posteriori expected value. Applications to simulated and real hormone secretion/pharmacokinetic problems are presented which show that this nonlinear approach is more accurate than the linear one. In addition, more realistic confidence intervals are obtained. © 2002 Biomedical Engineering Society.
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页码:1077 / 1087
页数:10
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