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  4. Nonparametric deconvolution of hormone time-series: A state-space approach
 
conference paper

Nonparametric deconvolution of hormone time-series: A state-space approach

De Nicolao, G.
•
Ferrari-Trecate, G.
•
Franzosi, M.
1998
Proc. IEEE Conference on Control Applications

The instantaneous secretion rate (ISR) of endocrine glands is not directly measurable and it can be reconstructed only indirectly by applying deconvolution algorithms to time-series of plasma hormone concentrations. In particular, nonparametric regularization-based deconvolution hinges on a variational problem whose solution is usually approximated by discretizing the continuous-time axis. The paper shows how to perform regularized deconvolution avoiding any form of discretization. In view of the equivalence between regularization and Bayesian estimation, it is seen that the estimated ISR is a weighted sum of N basis functions, where N is the number of data. State-space methods are used to derive analytically the basis functions as well as the entries of the matrix of the linear system used to compute the weights. Alternatively, the weights can be computed in O(N) operations by a suitable algorithm based on Kalman filtering. As an illustration of the method, we estimate the spontaneous pulsatile ISR of luteinizing hormone (LH) from time series of plasma LH concentrations sampled every 5 min.

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Type
conference paper
DOI
10.1109/CCA.1998.728443
Author(s)
De Nicolao, G.
Ferrari-Trecate, G.
Franzosi, M.
Date Issued

1998

Published in
Proc. IEEE Conference on Control Applications
Start page

346

End page

350

Note

Trieste, Italy, 1-4 September.

Editorial or Peer reviewed

REVIEWED

Written at

OTHER

EPFL units
SCI-STI-GFT  
Available on Infoscience
January 10, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/132742
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