Deep learning for scoring sleep based on cardiorespiratory signals as compared to auto and multiple manual sleep scorings based on neurological signals

P. Anderer (Vienna, Austria), P. Fonseca (Eindhoven, Netherlands), M. Ross (Vienna, Austria), A. Moreau (Vienna, Austria), A. Cerny (Vienna, Austria), X. Aubert (Eindhoven, Netherlands), M. Klee (Eindhoven, Netherlands)

Source: International Congress 2018 – New diagnostic tools for sleep and breathing and healthcare provision options
Session: New diagnostic tools for sleep and breathing and healthcare provision options
Session type: Poster Discussion
Number: 2248
Disease area: Sleep and breathing disorders

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P. Anderer (Vienna, Austria), P. Fonseca (Eindhoven, Netherlands), M. Ross (Vienna, Austria), A. Moreau (Vienna, Austria), A. Cerny (Vienna, Austria), X. Aubert (Eindhoven, Netherlands), M. Klee (Eindhoven, Netherlands). Deep learning for scoring sleep based on cardiorespiratory signals as compared to auto and multiple manual sleep scorings based on neurological signals. 2248

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