DOSED: A deep learning approach to detect multiple sleep micro-events in EEG signal.

Journal: Journal of neuroscience methods
Published Date:

Abstract

BACKGROUND: Electroencephalography (EEG) monitors brain activity during sleep and is used to identify sleep disorders. In sleep medicine, clinicians interpret raw EEG signals in so-called sleep stages, which are assigned by experts to every 30s window of signal. For diagnosis, they also rely on shorter prototypical micro-architecture events which exhibit variable durations and shapes, such as spindles, K-complexes or arousals. Annotating such events is traditionally performed by a trained sleep expert, making the process time consuming, tedious and subject to inter-scorer variability. To automate this procedure, various methods have been developed, yet these are event-specific and rely on the extraction of hand-crafted features.

Authors

  • S Chambon
    Center for Sleep Sciences and Medicine, Stanford University, Palo Alto, CA, USA; Research & Algorithms Team, Dreem, Paris, France; LTCI Télécom ParisTech, Université Paris-Saclay, Paris, France. Electronic address: stan.chambon@gmail.com.
  • V Thorey
    Research & Algorithms Team, Dreem, Paris, France. Electronic address: valentin@dreem.com.
  • P J Arnal
    Research & Algorithms Team, Dreem, Paris, France. Electronic address: pierrick@dreem.com.
  • E Mignot
    Center for Sleep Sciences and Medicine, Stanford University, Palo Alto, CA, USA. Electronic address: mignot@stanford.edu.
  • A Gramfort
    LTCI Télécom ParisTech, Université Paris-Saclay, Paris, France; Inria, Université Paris-Saclay, Paris, France; CEA Neurospin, Université Paris-Saclay, Paris, France. Electronic address: alexandre.gramfort@inria.fr.