Sleep scoring using artificial neural networks

Sleep Medicine Reviews - Tập 16 - Trang 251-263 - 2012
Marina Ronzhina1, Oto Janoušek1, Jana Kolářová1, Marie Nováková2, Petr Honzík3, Ivo Provazník1
1Department of Biomedical Engineering, Faculty of Electrical Engineering and Communication, Brno University of Technology, Kolejní 4, Brno 61200, Czech Republic
2Department of Physiology, Faculty of Medicine, Masaryk University, Kamenice 753/5, Brno 62500, Czech Republic
3Department of Control and Instrumentation, Faculty of Electrical Engineering and Communication, Brno University of Technology, Kolejní 4, Brno 61200, Czech Republic

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