DocumentCode
3847018
Title
Automated Sleep-Spindle Detection in Healthy Children Polysomnograms
Author
Leonardo Causa;Claudio M. Held;Javier Causa;Pablo A. Estévez;Claudio A. Perez;Rodrigo Chamorro;Marcelo Garrido;Cecilia Algarín;Patricio Peirano
Author_Institution
Department of Electrical Engineering , Universidad de Chile, Santiago, Chile
Volume
57
Issue
9
fYear
2010
Firstpage
2135
Lastpage
2146
Abstract
We present a new methodology to detect and characterize sleep spindles (SSs), based on the nonlinear algorithms, empirical-mode decomposition, and Hilbert-Huang transform, which provide adequate temporal and frequency resolutions in the electroencephalographic analysis. In addition, the application of fuzzy logic allows to emulate expert´s procedures. Additionally, we built a database of 56 all-night polysomnographic recordings from children for training and testing, which is among the largest annotated databases published on the subject. The database was split into training (27 recordings), validation (10 recordings), and testing (19 recordings) datasets. The SS events were marked by sleep experts using visual inspection, and these marks were used as golden standard. The overall SS detection performance on the testing dataset of continuous all-night sleep recordings was 88.2% sensitivity, 89.7% specificity, and 11.9% false-positive (FP) rate. Considering only non-REM sleep stage 2, the results showed 92.2% sensitivity, 90.1% specificity, and 8.9% FP rate. In general, our system presents enhanced results when compared with most systems found in the literature, thus improving SS detection precision significantly without the need of hypnogram information.
Keywords
"Pediatrics","Sleep","Electroencephalography","Visual databases","Testing","Neurons","Frequency","Algorithm design and analysis","Fuzzy logic","Inspection"
Journal_Title
IEEE Transactions on Biomedical Engineering
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2010.2052924
Filename
5484475
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