Tesis
Classificação de estágios de sono através da aplicação de transformada wavelet discreta sobre um único canal de eletroencefalograma
Fecha
2016-01-25Autor
Silveira, Thiago Lopes Trugillo da
Institución
Resumen
The correct sleep stage classification allows sleep experts to diagnose and treat disorders
such as apnea, narcolepsy and insomnia. Such task is classically performed by sleep
medicine experts, where one or more physiological signals are visually inspected. Since electroencephalogram
(EEG) signals are considered good indicators for sleep analysis, they are
widely used for sleep stage scoring. Although, the adequate sleep classification for a single
night of sleep can demand from two to four hours of analysis, being frequently performed by
two experts. The current study presents a novel decision support system, aiming to facilitate this
experts’ task. The proposed methodology is based on the multi-resolution analysis of a single
EEG channel through the application of the discrete wavelet transform (DWT). Methodologies
which consider only one EEG channel for sleep scoring have reduced computational cost
and the related acquisition equipments are easier to use in comparison with the multi-channel
ones. Afterwards the signal decomposition by DWT, statistical features from sleep related brain
rhythms are extracted and feed a classifier. Random forests are used for classification task in
the current study. A set of 39 signals corresponding to 20 volunteers of a public database is
considered. The performance of the proposed method is evaluated through techniques such as
cross-validation, where accuracies keep higher than 90% and kappa coefficient higher than 0.8
are achieved for 2 to 6 states of sleep stages. The introduced method achieves better, or at least
comparable, results when compared with state-of-the-art studies in all analyzed scenarios.