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Year 2016, Volume: 5 , 288 - 297, 07.11.2016

Abstract

References

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  • W. Huang, Z. Shen, N. E. Huang and Y. C. Fung, Engineering analysis of biological variables: An example of blood pressure over 1 day, Proc Natl Acad Sci USA, Volume 25 (9) (1998) 4816–4821.
  • H. Ocak, Automatic detection of epileptic seizures in EEG using discrete wavelet transform and approximate entropy, Expert Systems with Applications, Volume 36 (2009) (2009) 2027–2036.
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Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition

Year 2016, Volume: 5 , 288 - 297, 07.11.2016

Abstract

Several features are used in order to evaluate the epileptic components of the Electroencephalogram (EEG) signals. The generated feature matrices are applied to different classifiers as input. It is aimed to detect different epileptic stage. In this study, performances of Wavelet Transform and Empirical Mode Decomposition methods which are used commonly to extract feature in epilepsy studies have been compared. EEG signals, which contain normal and seizure stages, have been divided into 5 sub-bands including different frequency components via both methods. Feature matrices have been obtained by calculating mean, standard deviation, entropy and power for each sub-band. The feature matrices have been classified by k-nearest neighbor algorithm and results have been compared for both feature extraction methods. Analysis has been implemented patient-specifically for 14 patients with epilepsy. 

References

  • http://www.who.int/mediacentre/factsheets/fs999/en/ World Health Organization (September 6, 2016).
  • H. R. Mohseni, A. Maghsoudi and M. B. Shamsollahi, Seizure detection in EEG signals: A comparison of different approaches, 28th IEEE EMBS Annual International Conference, 6724-6727, New York City, USA, 31 Aug-3 Sep. 2006.
  • N. Sivasankari, K. Thanushkodi, Automated epileptic seizure detection in EEG signals using FastICA and neural network, İnt. J. Advance, Soft Comput. Appl., Volume 1 (2) (2009) 1-14.
  • H. Vavadi, A. Ayatollahi and A. Mirzaei, A wavelet-approximate entropy method for epileptic activity detection from EEG and its sub-bands, J. Biomedical Science and Engineering, Volume 3 (12) (2010) 1182-1189.
  • S. J. Husain, K. S. Rao, An artificial neural network model for classification of epileptic seizures using Huang-Hilbert Transform, International Journal on Soft Computing, Volume 5 (3) (2014) 23-33.
  • Y. Liu, W. Zhou, Q. Yuan and S. Chen, Automatic seizure detection using wavelet transform and SVM in Long-Term intracranial EEG, IEEE Transactions on Neural Systems and Rehabilitation Engineering Volume 20 (6) (2012) 749-755.
  • A. B. Das, M. I. H. Bhuiyan, Discrimination and classification of focal and non-focal EEG signals using entropy-based features in the EMD-DWT domain, Biomedical Signal Processing and Control Volume 29 (2016) 11–21.
  • R.B. Pachori, V. Bajaj, Analysis of normal and epileptic seizure EEG signals using empirical mode decomposition, Computer Methods and Programs in Biomedicine, Volume 104 (2011) 373-381.
  • E. Juarez-Guerra, V. Alarcon-Aquino and P. Gomez-Gil, Epilepsy seizure detection in EEG signals using wavelet transforms and neural networks, International Joint Conferences on Computer, Information, Systems Sciences, & Engineering (CISSE), 1-6, 12-14 December 2013.
  • A. K. Tafreshi, A. M. Nasrabadi and A. H. Omidvarnia, Epileptic Seizure Detection Using Empirical Mode Decomposition, Signal Processing and Information Technology (ISSPIT), 238-242, Sarajevo, Bosnia & Herzegovina, 16-19 December 2008.
  • C. Shahnaz, R. H. Md. Rafi, S. A. Fattah, W.-P. Zhu and M. O. Ahmad, Seizure detection exploiting EMD-Wavelet analysis of EEG Signals, Int. Sem. Circuits and Systems (ISCAS), , 57-60, Lisbon, Portugal, 24-27 May 2015.
  • International database http://www.physionet.org (December 6, 2011)
  • N. E. Huang, Z. Shen, S. R. Long, M. C. Wu, H. H. Shih, Q. Zheng, N. C. Yen, C. C. Tung and H. H. Liu, The empirical mode decomposition and the Hilbert spectrum for nonlinear and nonstationary time series analysis, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences, Volume 454 (1971) (1998) 903–995.
  • W. Huang, Z. Shen, N. E. Huang and Y. C. Fung, Engineering analysis of biological variables: An example of blood pressure over 1 day, Proc Natl Acad Sci USA, Volume 25 (9) (1998) 4816–4821.
  • H. Ocak, Automatic detection of epileptic seizures in EEG using discrete wavelet transform and approximate entropy, Expert Systems with Applications, Volume 36 (2009) (2009) 2027–2036.
  • A. Graps, An Introduction to Wavelets, IEEE Computational Science & Engineering, Volume 2 (2) (1995) 50-61.
  • J. Han and M. Kamber, Data Mining Concepts and Techniques, Morgan Kaufmann, USA, 2006
  • T. M. Mitchell, Machine Learning, McGraw-Hill Science/Engineering/Math, USA, 1997.
  • S. Joshi and S. R. Priyanka Shetty, Performance Analysis of Different Classification Methods in Data Mining for Diabetes Dataset Using WEKA Tool, International Journal on Recent and Innovation Trends in Computing and Communication, Volume (3) (3) (2015) 1168-1173.
There are 19 citations in total.

Details

Journal Section Articles
Authors

Erhan Bergil

Murat Yıldız This is me

Publication Date November 7, 2016
Published in Issue Year 2016 Volume: 5

Cite

APA Bergil, E., & Yıldız, M. (2016). Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition. Journal of New Results in Science, 5, 288-297.
AMA Bergil E, Yıldız M. Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition. JNRS. November 2016;5:288-297.
Chicago Bergil, Erhan, and Murat Yıldız. “Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition”. Journal of New Results in Science 5, November (November 2016): 288-97.
EndNote Bergil E, Yıldız M (November 1, 2016) Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition. Journal of New Results in Science 5 288–297.
IEEE E. Bergil and M. Yıldız, “Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition”, JNRS, vol. 5, pp. 288–297, 2016.
ISNAD Bergil, Erhan - Yıldız, Murat. “Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition”. Journal of New Results in Science 5 (November 2016), 288-297.
JAMA Bergil E, Yıldız M. Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition. JNRS. 2016;5:288–297.
MLA Bergil, Erhan and Murat Yıldız. “Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition”. Journal of New Results in Science, vol. 5, 2016, pp. 288-97.
Vancouver Bergil E, Yıldız M. Comparison of Seizure Detection Performances of Features Based on Wavelet Transform and Empirical Mode Decomposition. JNRS. 2016;5:288-97.


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