Medical Engineering & Physics
Volume 29, Issue 8 , Pages 895-909, October 2007

Strategies for adapting automated seizure detection algorithms

  • Shane M. Haas

      Affiliations

    • Flint Hills Scientific, L.L.C., 5040 Bob Billings Pkwy, Ste. A, Lawrence, KS 66049, USA
    • The AlphaSimplex Group, L.L.C., Cambridge, MA, USA
  • ,
  • Mark G. Frei

      Affiliations

    • Flint Hills Scientific, L.L.C., 5040 Bob Billings Pkwy, Ste. A, Lawrence, KS 66049, USA
    • Corresponding Author InformationCorresponding author. Tel.: +1 785 838 3733; fax: +1 785 838 3715.
  • ,
  • Ivan Osorio

      Affiliations

    • Flint Hills Scientific, L.L.C., 5040 Bob Billings Pkwy, Ste. A, Lawrence, KS 66049, USA
    • Comprehensive Epilepsy Center, Kansas University Medical Center, Kansas City, KS, USA

Received 12 July 2006; received in revised form 29 September 2006; accepted 4 October 2006. published online 13 November 2006.

Abstract 

The time-varying dynamics of epileptic seizures and the high inter-individual variability make their detection difficult. Osorio et al. [Osorio, I, Frei, MG, Wilkinson, SB. Real-time automated detection and quantitative analysis of seizures and short-term prediction of clinical onset. Epilepsia 1998;39(6):615–27] developed an algorithm that has had success in detecting seizures. We present a new strategy for adapting this algorithm or other algorithms to an individual's seizure fingerprint using both seizure and non-seizure training segments and a novel performance criterion that directly incorporates the non-linearity and lack of differentiability of the algorithm. The joint optimization of a linear filter chosen from a bank of candidate filters and of a percentile used in order statistic filtering provides an empirical solution that is both practical and useful, which should translate into improved sensitivity, specificity and detection speed. This premise is strongly supported by the results obtained in a large validation study and the examples illustrated in this article. This strategy is generalizable to other detection algorithms with modular architecture and spectral filters.

Keywords: Epilepsy, Electroencephalogram signal processing, Seizure detection

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PII: S1350-4533(06)00206-2

doi:10.1016/j.medengphy.2006.10.003

Medical Engineering & Physics
Volume 29, Issue 8 , Pages 895-909, October 2007