Sleep stage scoring using the neural network model: Comparison between visual and automatic analysis in normal subjects and patients

被引:142
作者
Schaltenbrand, N
Lengelle, R
Toussaint, M
Luthringer, R
Carelli, G
Jacqmin, A
Lainey, E
Muzet, A
Macher, JP
机构
[1] INST RES NEUROSCI & PSYCHIAT, ROUFFACH, FRANCE
[2] CNRS, LAB PHYSIOL & PSYCHOL ENVIRONM, STRASBOURG, FRANCE
[3] UNIV TECHNOL TROYES, TROYES, FRANCE
关键词
sleep; automatic scoring; visual scoring; scoring variability; neural networks;
D O I
10.1093/sleep/19.1.26
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
In this paper, we compare and analyze the results from automatic analysis and visual scoring of nocturnal sleep recordings. The validation is based on a sleep recording set of 60 subjects (33 males and 27 females), consisting of three groups: 20 normal control subjects, 20 depressed patients and 20 insomniac patients treated with a benzodiazepine. The inter-expert variability estimated from these 60 recordings (61,949 epochs) indicated an average agreement rate of 87.5% between two experts on the basis of 30-second epochs. The automatic scoring system, compared in the same way with one expert, achieved an average agreement rate of 82.3%, without expert supervision. By adding expert supervision for ambiguous and unknown epochs, detected by computation of an uncertainty index and unknown rejection, the automatic/expert agreement grew from 82.3% to 90%, with supervision over only 20% of the night. Bearing in mind the composition and the size of the test sample, the automated sleep staging system achieved a satisfactory performance level and may be considered a useful alternative to visual sleep stage scoring for large-scale investigations of human sleep.
引用
收藏
页码:26 / 35
页数:10
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