Proceedings (Sep 2018)

A Convolutional Network for the Classification of Sleep Stages

  • Isaac Fernández-Varela,
  • Elena Hernández-Pereira,
  • Vicente Moret-Bonillo

DOI
https://doi.org/10.3390/proceedings2181174
Journal volume & issue
Vol. 2, no. 18
p. 1174

Abstract

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The classification of sleep stages is a crucial task in the context of sleep medicine. It involves the analysis of multiple signals thus being tedious and complex. Even for a trained physician scoring a whole night sleep study can take several hours. Most of the automatic methods trying to solve this problem use human engineered features biased for a specific dataset. In this work we use deep learning to avoid human bias. We propose an ensemble of 5 convolutional networks achieving a kappa index of 0.83 when classifying 500 sleep studies.

Keywords