Tracking the states of a nonlinear and nonstationary system in the weight-space of artificial neural networks
Contribuinte(s) |
J. A. E. Spaan |
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Data(s) |
01/03/2006
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Resumo |
We propose a novel interpretation and usage of Neural Network (NN) in modeling physiological signals, which are allowed to be nonlinear and/or nonstationary. The method consists of training a NN for the k-step prediction of a physiological signal, and then examining the connection-weight-space (CWS) of the NN to extract information about the signal generator mechanism. We de. ne a novel feature, Normalized Vector Separation (gamma(ij)), to measure the separation of two arbitrary states i and j in the CWS and use it to track the state changes of the generating system. The performance of the method is examined via synthetic signals and clinical EEG. Synthetic data indicates that gamma(ij) can track the system down to a SNR of 3.5 dB. Clinical data obtained from three patients undergoing carotid endarterectomy of the brain showed that EEG could be modeled (within a root-means-squared-error of 0.01) by the proposed method, and the blood perfusion state of the brain could be monitored via gamma(ij), with small NNs having no more than 21 connection weight altogether. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Springer Heidelberg |
Palavras-Chave | #nonlinearity #nonstationarity #connection weight-space #neural network #EEG signals #Time-series #Prediction #Apnea #Chaos #EEG #C1 #291599 Biomedical Engineering not elsewhere classified #290903 Other Electronic Engineering #280212 Neural Networks, Genetic Alogrithms and Fuzzy Logic #730305 Diagnostic methods #700103 Information processing services |
Tipo |
Journal Article |