Sleep Spindle Detection by Using Merge Neural Gas

Authors

  • Pablo A. Estévez
  • Ricardo Zilleruelo-Ramos
  • Rodrigo Hernández
  • Leonardo Causa
  • Claudio M. Held

DOI:

https://doi.org/10.2390/biecoll-wsom2007-149

Keywords:

self-organizing maps, neural gas, sleep spindles, EEG, DDC: 004 (Data processing, computer science, computer systems)

Abstract

In this paper the Merge Neural Gas (MNG) model is applied to detect sleep spindles in EEG. Features are extracted from windows of the EEG by using short time Fourier transform. The total power spectrum is computed in six frequency bands and used as input to the MNG network. The results show that MNG outperforms simple neural gas in correctly detecting sleep spindles. In addition the temporal quantization results as well as sleep trajectories are visualized on two-dimensional maps by using the OVING projection method.

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Published

2007-12-31