DocumentCode
541548
Title
PhysioNet 2010 Challenge: A robust multi-channel adaptive filtering approach to the estimation of physiological recordings
Author
Silva, Ikaro
Author_Institution
Harvard-MIT Div. of Health Sci. & Technol., MIT, Cambridge, MA, USA
fYear
2010
fDate
26-29 Sept. 2010
Firstpage
313
Lastpage
316
Abstract
The 2010 PhysioNet Challenge was to predict the last few seconds of a physiological waveform given its previous history and M-1 different concurrent physiological recordings. A robust approach was implemented by using a bank of adaptive filters to predict the desired channel. In all, M channels (the M-1 original signals, and 1 signal derived from the previous history of the target signal) were used to estimate the missing data. For each channel, a Gradient Adaptive Lattice Laguerre filter (GALL) was trained to estimate the desired channel. The GALL filter was chosen because of its fast convergence, stability, and ability to model a long response using relatively few parameters. The prediction of each of the channels (the output of each of the GALL filters) was then linearly combined using time-varying weights determined through a Kalman filter. This approach is extensible to recordings with any number of signals, other types of signals, and other problem domains. The code for the algorithm is freely available at PhysioNet under the GPL.
Keywords
adaptive Kalman filters; convergence of numerical methods; medical signal processing; signal reconstruction; stochastic processes; Kalman filter; PhysioNet 2010 challenge; convergence; gradient adaptive lattice Laguerre filter; multichannel adaptive filtering approach; physiological recordings; physiological waveform; signal reconstruction; time-varying weights; Channel estimation; Cost function; Estimation; Image reconstruction; Kalman filters; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Computing in Cardiology, 2010
Conference_Location
Belfast
ISSN
0276-6547
Print_ISBN
978-1-4244-7318-2
Electronic_ISBN
0276-6547
Type
conf
Filename
5737972
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