J Clin Neurophysiol. 2012 Feb;29(1):58-64.
Sorensen GL, Jennum P, Kempfner J, Zoetmulder M, Sorensen HB.
Abstract
SUMMARY:
Arousals occur from all sleep stages and can be identified as abrupt
electroencephalogram (EEG) and electromyogram (EMG) changes. Manual
scoring of arousals is time consuming with low interscore agreement.
The aim of this study was to design an arousal detection algorithm
capable of detecting arousals from non-rapid eye movement (REM) and REM
sleep, independent of the subject's age and disease. The proposed
algorithm uses features from EEG, EMG, and the manual sleep stage
scoring as input to a feed-forward artificial neural network (ANN). The
performance of the algorithm has been assessed using polysomnographic
(PSG) recordings from a total of 24 subjects. Eight of the subjects
were diagnosed with Parkinson disease (PD) and the rest (16) were
healthy adults in various ages. The performance of the algorithm was
validated in 3 settings: testing on the 8 patients with PD using the
leave-one-out method, testing on the 16 healthy adults using the
leave-one-out method, and finally testing on all 24 subjects using a
4-fold crossvalidation. For these 3 validations, the sensitivities were
89.8%, 90.3%, and 89.4%, and the positive predictive values (PPVs) were
88.8%, 89.4%, and 86.1%. These results are high compared with those of
previously presented arousal detection algorithms and especially
compared with the high interscore variability of manual scorings.
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