EEG signal description with spectral-envelope-based speech recognition features for detection of neonatal seizures.

Typeset version

 

TY  - JOUR
  - Temko A, Nadeu C, Marnane W, Boylan G, Lightbody G
  - 2011
  - November
  - IEEE Transactions on Information Technology in Biomedicine
  - EEG signal description with spectral-envelope-based speech recognition features for detection of neonatal seizures.
  - Validated
  - Altmetric: 1 ()
  - 15
  - 6
  - 839
  - 847
  - In this paper, features which are usually employed in automatic speech recognition (ASR) are used for the detection of seizures in newborn EEG. In particular, spectral envelope-based features, composed of spectral powers and their spectral derivatives are compared to the established feature set which has been previously developed for EEG analysis. The results indicate that the ASR features which model the spectral derivatives, either full-band or localized in frequency, yielded a performance improvement, in comparison to spectral-power-based features. Indeed it is shown here that they perform reasonably well in comparison with the conventional EEG feature set. The contribution of the ASR features was analyzed here using the support vector machines (SVM) recursive feature elimination technique. It is shown that the spectral derivative features consistently appear among the top-rank features. The study shows that the ASR features should be given a high priority when dealing with the description of the EEG signal.
  - 10.1109/TITB.2011.2159805
DA  - 2011/11
ER  - 
@article{V153643866,
   = {Temko A,  Nadeu C and  Marnane W,  Boylan G and  Lightbody G },
   = {2011},
   = {November},
   = {IEEE Transactions on Information Technology in Biomedicine},
   = {EEG signal description with spectral-envelope-based speech recognition features for detection of neonatal seizures.},
   = {Validated},
   = {Altmetric: 1 ()},
   = {15},
   = {6},
  pages = {839--847},
   = {{In this paper, features which are usually employed in automatic speech recognition (ASR) are used for the detection of seizures in newborn EEG. In particular, spectral envelope-based features, composed of spectral powers and their spectral derivatives are compared to the established feature set which has been previously developed for EEG analysis. The results indicate that the ASR features which model the spectral derivatives, either full-band or localized in frequency, yielded a performance improvement, in comparison to spectral-power-based features. Indeed it is shown here that they perform reasonably well in comparison with the conventional EEG feature set. The contribution of the ASR features was analyzed here using the support vector machines (SVM) recursive feature elimination technique. It is shown that the spectral derivative features consistently appear among the top-rank features. The study shows that the ASR features should be given a high priority when dealing with the description of the EEG signal.}},
   = {10.1109/TITB.2011.2159805},
  source = {IRIS}
}
AUTHORSTemko A, Nadeu C, Marnane W, Boylan G, Lightbody G
YEAR2011
MONTHNovember
JOURNAL_CODEIEEE Transactions on Information Technology in Biomedicine
TITLEEEG signal description with spectral-envelope-based speech recognition features for detection of neonatal seizures.
STATUSValidated
TIMES_CITEDAltmetric: 1 ()
SEARCH_KEYWORD
VOLUME15
ISSUE6
START_PAGE839
END_PAGE847
ABSTRACTIn this paper, features which are usually employed in automatic speech recognition (ASR) are used for the detection of seizures in newborn EEG. In particular, spectral envelope-based features, composed of spectral powers and their spectral derivatives are compared to the established feature set which has been previously developed for EEG analysis. The results indicate that the ASR features which model the spectral derivatives, either full-band or localized in frequency, yielded a performance improvement, in comparison to spectral-power-based features. Indeed it is shown here that they perform reasonably well in comparison with the conventional EEG feature set. The contribution of the ASR features was analyzed here using the support vector machines (SVM) recursive feature elimination technique. It is shown that the spectral derivative features consistently appear among the top-rank features. The study shows that the ASR features should be given a high priority when dealing with the description of the EEG signal.
PUBLISHER_LOCATION
ISBN_ISSN
EDITION
URL
DOI_LINK10.1109/TITB.2011.2159805
FUNDING_BODY
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