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On the Use of Neural Network Techniques to Analyse Sleep EEG Data

 

作者: R.B. Baumgart-Schmitt,   W.M. Herrmann,   R. Eilers,   F. Bes,  

 

期刊: Neuropsychobiology  (Karger Available online 1997)
卷期: Volume 36, issue 4  

页码: 194-210

 

ISSN:0302-282X

 

年代: 1997

 

DOI:10.1159/000119412

 

出版商: S. Karger AG

 

关键词: Neural networks;Sleep EEG;Automated scoring;Evolutionary algorithms;Genetic algorithms

 

数据来源: Karger

 

摘要:

To automate sleep stage scoring, the system sleep analysis system to challenge innovative artificial networks (SASCIA) has been developed and implemented. The aims of our investigation were twofold: In addition to automatic sleep stage scoring the hypothesis was tested that the information of only 1 EEG channel (C4-A2) should be sufficient to automatically generate sleep profiles which are comparable with profiles made by sleep experts on the basis of at least 3-channel EEG (C4-A2), EOG and EMG, as EOG and EMG are seen as epiphenomena during sleep and the full information about the sleep stage should – according to our hypothesis – be available in the EEG. The main components of the SASCIA sleep analysis system are designed to meet the requirements of flexible adaptation to the interindividual differences of the sleep EEG. The core of the SASCIA sleep analysis system consists of neural networks. Supervised learning was implemented and the experts’ scorings were included into the learning set and test set. The feature selections out of a large number (118) are performed by genetic algorithms and the topologies of the networks are optimized by evolutionary algorithms. Different mathematical procedures were used to evaluate and optimize the efficiency of the system. The profiles generated by SASCIA are in reasonable agreement with the sleep stages scored by experts according to RKR. The development of the system is communicated in three parts: the first communication deals with the application of the neural network techniques using evolutionary and genetic algorithms and with the selection of feature space. The second communication shows the training of these evolutionary optimized network techniques with multiple subjects and the application of context rules, while the third communication shows an improvement in the robustness by the simultaneous application of 9 different networks obtained from 9 subject types which were used in combination with context

 

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