DocumentCode :
1613126
Title :
A Filter Based Encoding Model For Mouse Retinal Ganglion Cells
Author :
Zhong, Q. ; Boykin, P.O. ; Jacobs, A. ; Roychowdhury, V.P. ; Nirenberg, S.
Author_Institution :
Dept. of Electr. Eng., California Univ., Los Angeles, CA
fYear :
2006
Firstpage :
2087
Lastpage :
2090
Abstract :
We adopt a system theoretic approach and explore the model of retinal ganglion cells as linear filters followed by a maximum-likelihood Bayesian predictor. We evaluate the model by using cross-validation, i.e., first the model parameters are estimated using a training set, and then the prediction error is computed (by comparing the stochastic rate predicted by the model with the rate code of the response) for a test set. As in system identification theory, we present spatially uniform stimuli to the retina, whose temporal intensity is drawn independently from a Gaussian distribution, and we simultaneously record the spike trains from multiple neurons. The optimal linear filter for each cell is obtained by maximizing the mutual information between the filtered stimulus values and the output of the cell (as measured in terms of a stochastic rate code). Our results show that the model presented in this paper performs well on the test set, and it outperforms the identity Bayesian model and the traditional linear model. Moreover, in order to reduce the number of optimal filters needed for prediction, we cluster the cells based on the filters´ shapes, and use the cluster consensus filters to predict the firing rates of all neurons in the same class. We obtain almost the same performance with these cluster filters. These results provide hope that filter-based retinal prosthetics might be an effective and feasible idea
Keywords :
Bayes methods; Gaussian distribution; bioelectric phenomena; cellular biophysics; encoding; eye; maximum likelihood estimation; neurophysiology; physiological models; prosthetics; stochastic processes; Gaussian distribution; cluster consensus filters; filter based encoding model; filter-based retinal prosthetics; firing rates; maximum-likelihood Bayesian predictor; mouse retinal ganglion cells; mutual information; neurons; optimal linear filter; prediction error; spike trains; stochastic rate code; system identification theory; system theoretic approach; Bayesian methods; Encoding; Information filtering; Mice; Neurons; Nonlinear filters; Predictive models; Retina; Stochastic processes; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Engineering in Medicine and Biology Society, 2005. IEEE-EMBS 2005. 27th Annual International Conference of the
Conference_Location :
Shanghai
Print_ISBN :
0-7803-8741-4
Type :
conf
DOI :
10.1109/IEMBS.2005.1616870
Filename :
1616870
Link To Document :
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