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Neural network an1alysis of sleep stages enables efficient diagnosis of narcolepsy

5 October 2017
Jens B. Stephansen
A. N. Olesen
Mads Olsen
A. Ambati
E. Leary
Hyatt Moore
O. Carrillo
Ling Lin
F. Han
Han Yan
Yunliang Sun
Y. Dauvilliers
Sabine Scholz
L. Barateau
B. Hogl
A. Stefani
Seung-Chul Hong
Tae Won Kim
F. Pizza
G. Plazzi
S. Vandi
E. Antelmi
Dimitri Perrin
S. Kuna
P. Schweitzer
C. Kushida
P. Peppard
H. Sørensen
P. Jennum
Emmanuel Mignot
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Abstract

Analysis of sleep for the diagnosis of sleep disorders such as Type-1 Narcolepsy (T1N) currently requires visual inspection of polysomnography records by trained scoring technicians. Here, we used neural networks in approximately 3,000 normal and abnormal sleep recordings to automate sleep stage scoring, producing a hypnodensity graph - a probability distribution conveying more information than classical hypnograms. Accuracy of sleep stage scoring was validated in 70 subjects assessed by six scorers. The best model performed better than any individual scorer (87% versus consensus). It also reliably scores sleep down to 5 instead of 30 second scoring epochs. A T1N marker based on unusual sleep-stage overlaps achieved a specificity of 96% and a sensitivity of 91%, validated in independent datasets. Addition of HLA-DQB1*06:02 typing increased specificity to 99%. Our method can reduce time spent in sleep clinics and automates T1N diagnosis. It also opens the possibility of diagnosing T1N using home sleep studies.

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