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A continuous mapping of sleep states through association of EEG with a mesoscale cortical model.

Authors :
Lopour, Beth A
Lopour, Beth A
Tasoglu, Savas
Kirsch, Heidi E
Sleigh, James W
Szeri, Andrew J
Lopour, Beth A
Lopour, Beth A
Tasoglu, Savas
Kirsch, Heidi E
Sleigh, James W
Szeri, Andrew J
Source :
Journal of computational neuroscience; vol 30, iss 2, 471-487; 0929-5313
Publication Year :
2011

Abstract

Here we show that a mathematical model of the human sleep cycle can be used to obtain a detailed description of electroencephalogram (EEG) sleep stages, and we discuss how this analysis may aid in the prediction and prevention of seizures during sleep. The association between EEG data and the cortical model is found via locally linear embedding (LLE), a method of dimensionality reduction. We first show that LLE can distinguish between traditional sleep stages when applied to EEG data. It reliably separates REM and non-REM sleep and maps the EEG data to a low-dimensional output space where the sleep state changes smoothly over time. We also incorporate the concept of strongly connected components and use this as a method of automatic outlier rejection for EEG data. Then, by using LLE on a hybrid data set containing both sleep EEG and signals generated from the mesoscale cortical model, we quantify the relationship between the data and the mathematical model. This enables us to take any sample of sleep EEG data and associate it with a position among the continuous range of sleep states provided by the model; we can thus infer a trajectory of states as the subject sleeps. Lastly, we show that this method gives consistent results for various subjects over a full night of sleep and can be done in real time.

Details

Database :
OAIster
Journal :
Journal of computational neuroscience; vol 30, iss 2, 471-487; 0929-5313
Notes :
application/pdf, Journal of computational neuroscience vol 30, iss 2, 471-487 0929-5313
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367458161
Document Type :
Electronic Resource