Outlining a simple and robust method for the automatic detection of EEG arousals

نویسندگان

  • Isaac Fernández-Varela
  • Diego Álvarez-Estévez
  • Elena Hernández-Pereira
  • Vicente Moret-Bonillo
چکیده

This work proposes a new technique for the automatic detection of electroencephalographic (EEG) arousals in sleep polysomnographic recordings. We have developed a non-computationally complex algorithm with the idea of providing an easy integration into different software platforms. The approach combines different well-known signal analyses to identify relevant arousal patterns. Special emphasis is carried out to produce a robust, artifact tolerant algorithm. The resulting approach was tested using a database of 6 polysomnographic recordings from real patients, achieving an average kappa index of 0.77 with respect to the visual scorings made by clinical experts.

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تاریخ انتشار 2017