DocumentCode :
1119479
Title :
Construction of Point Process Adaptive Filter Algorithms for Neural Systems Using Sequential Monte Carlo Methods
Author :
Ergün, Ayla ; Barbieri, Riccardo ; Eden, Uri T. ; Wilson, Matthew A. ; Brown, Emery N.
Author_Institution :
Dept. of Anesthesia & Critical Care, Massachusetts Gen. Hosp., Boston, MA
Volume :
54
Issue :
3
fYear :
2007
fDate :
3/1/2007 12:00:00 AM
Firstpage :
419
Lastpage :
428
Abstract :
The stochastic state point process filter (SSPPF) and steepest descent point process filter (SDPPF) are adaptive filter algorithms for state estimation from point process observations that have been used to track neural receptive field plasticity and to decode the representations of biological signals in ensemble neural spiking activity. The SSPPF and SDPPF are constructed using, respectively, Gaussian and steepest descent approximations to the standard Bayes and Chapman-Kolmogorov (BCK) system of filter equations. To extend these approaches for constructing point process adaptive filters, we develop sequential Monte Carlo (SMC) approximations to the BCK equations in which the SSPPF and SDPPF serve as the proposal densities. We term the two new SMC point process filters SMC-PPFS and SMC-PPFD , respectively. We illustrate the new filter algorithms by decoding the wind stimulus magnitude from simulated neural spiking activity in the cricket cercal system. The SMC-PPFS and SMC-PPFD provide more accurate state estimates at low number of particles than a conventional bootstrap SMC filter algorithm in which the state transition probability density is the proposal density. We also use the SMC-PPFS algorithm to track the temporal evolution of a spatial receptive field of a rat hippocampal neuron recorded while the animal foraged in an open environment. Our results suggest an approach for constructing point process adaptive filters using SMC methods
Keywords :
Bayes methods; Gaussian processes; Monte Carlo methods; adaptive filters; approximation theory; bioelectric phenomena; brain; decoding; medical signal processing; neurophysiology; signal representation; Bayes method; Chapman-Kolmogorov system; Gaussian approximation; adaptive filter algorithms; decoding; neural receptive field plasticity; neural spiking activity; neural systems; rat hippocampal neuron; sequential Monte Carlo methods; state estimation; state transition probability density; steepest descent approximation; steepest descent point process filter; stochastic state point process filter; Adaptive filters; Decoding; Equations; Evolution (biology); Monte Carlo methods; Proposals; Signal processing; Sliding mode control; State estimation; Stochastic processes; Adaptive filtering; hidden Markov models; point processes; sequential Monte Carlo; state estimation; Action Potentials; Algorithms; Animals; Hippocampus; Models, Neurological; Models, Statistical; Monte Carlo Method; Nerve Net; Neuronal Plasticity; Rats; Signal Processing, Computer-Assisted; Stochastic Processes;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2006.888821
Filename :
4100829
Link To Document :
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