Detection of Brain Tumor in EEG Signals Using Independent Component Analysis

Authors

  • Akram RASHİD
  • Seema TAHİR
  • Aamer CHOUDHURY

DOI:

https://doi.org/10.18100/ijamec.80354

Keywords:

Elimination, Electroencephalogram, Image processing, Diagnose, Brain, abnormalities, Detection, Signals Detector,

Abstract

The Electroencephalogram(EEG) is Scientifically becoming an important tool of measuring brain activity. The EEG data is used to diagnose brain diseases and brain abnormalities. EEG helps to suit the increasing demand of brain tumor detection on affordable prices with better clinical and healthcare services. This research work presents a technique of efficient brain tumor detection in EEG signals using Independent Component Analysis(ICA). EEG signals which actually are carrying information regarding brain abnormalities are also contaminated by the artefacts both from subjects and equipment interferences. Artefacts are removed using adaptive filtering techniques(ICA). The signal features are extracted by ICA which are buried in   wide noise band. This clean artefact free EEG signal is then used as a train input for Maximum Likelihood Detector.   The trained input is then fed with test EEG signals. This way the presence of brain tumor in EEG signal is effectively detected. The results obtained experimentally demonstrate the efficiency of the technique in removing artefacts from EEG signals for efficient of brain tumor detection. 

Downloads

Download data is not yet available.

References

Shumei Zhang, Paul McCullagh, Chris Nugent, Huiru Zheng and Matthias Baumgarten, “Optimal model selection for posture recognition in home-based healthcare”, International Journal of Machine Learning and Cybernetics, Vol. 2, No. 1, pp. 1-14, 2011.

Yi Tang, Pingkun Yan, Yuan Yuan and Xuelong Li, “Single-image super-resolution via local learning”, International Journal of Machine Learning and Cybernetics, Vol. 2, No. 1, pp. 15-23, 2011.

Fadi N Karameh, Munther A. Dahleh, “Automated classification of EEG/ECG signals in tumor diagnostic” , Proceedings of American control conference, Chicago, Illinois, June 2012.

R. Verleger, T, Gasser, & J. Mocks, “Correlation of EOG artifacts in eventrelated potentials of EEG: Aspects of reliability and validity” , psychophysiology, Vol. 9, pp 472-480,2011.

M. Murugesan, Mrs. R. Sukanesh “ Towards Detection of Brain Tumor in Electroencephalogram Signals using Support Vector Machines”, International Journal of Computer Theory and Engineering, Vol. 1 No.5, December 2011.

Shane M. Haas, Mark G. Frei, Ivan Osorio, Bozenna Pasik-Duncan, & Jeff Radel, “EEG ocular artifact removal through ARMAX model system identification using extended least squares”, Communication in Information and Systems , 3,(1), pp 19-40, 2003.

M. Habl, Ch. Bauer, Ch. Ziegaus, E, W. Lang, F. Schulmeyer, “ Can ICA help identify brain tumor related EEG signals?” International Workshop on Independent Component Analysis and Blind signal Separation, Helsinki, Finland, 19-22 June 2012.

Alexander V. KRAMARENKO, Uner Tan, “Effects of High Frequency Electromagnetic Fields : A Brain Mapping Study”, International Journal of Neuroscience, Vol. 113, pp. 1007-1019, 3003.

Anthony J. Bell & Terrance J. Sejnowski, “AN information-Maximization approach to Blind separation and Blind deconvolution “, Neural Computation , Vol 7 pp,1004-1034, 2011.

Patange V.V & Deshmukh B.T “O.C.R.-A Method of Computes and Works on the Vision of Scanned Image” International Journal of Electronics, Communication & Instrumentation Engineering Research and Development, Vol. 2- 3, pp. 38-44, Sep. 30, 2012

Chumman Lal, Chandarkar et al, “Survey of Image Contrast Enhancement Methods”, International Journal of Electronics, Communication & Instrumentation Engineering Research and Development , Vol. 2-3, pp. 56-63, Sep. 30, 2012.

Usha Rani at al, “Image Developing Techniques –A Comparative Study”, International Journal of Electronics, Communication & Instrumentation Engineering Research and Development, Vol. 2-3,pp. 64-74, Sep. 30, 2012.

B.Srevanthi & C.H. Madhuri Devi, “Compressed Sensing Image Recovery Using Adaptive Nonlinear Filtering”, International Journal of Electronics, Communication & Instrumentation Engineering Research and Development, Vol. 2-3, pp. 75-80, Sep.30, 2012.

AbhinavDeshpsnda & S.K.Tadse, “Design Approach For Content-Based Image Recovery using Gabor-Zemike Features”, International Journal of Electronics, Communication & Instrumentation Engineering Research and Development, Vol.2-3 pp. 81-87, Sep. 30, 2012.

Ms. P. Swati Sowjanya & Ravi Mishra, “ Video Shot Boundary Detection”, International Journal of Electronics, Communication & Instrumentation Engineering Research and Development, Vol.1-2, pp.72-83, Dec. 2011.

N. R. Pal and S. K. Pal , “A review on image segmentation techniques,” Pattern Recognition , vol. 26, no. 9, pp. 1277-1294, 1993[2]

]L. P. Clarke, R. P. Velthuizen, M. A. Camacho, J. J. Heine, M.aidyanathan, L. O. Hall, R. W. Thatcher, and M. L. Silbiger, “MRI segmentation: methods and applications, Magn Reson Imaging , vol.13, no. 3, pp. 343-68, 1995.

ie Zhu, Xiaoping Li and Weiming Shen, “Effective genetic algorithm for resource-constrained project scheduling with limited preemptions”, International Journal of Machine Learning and Cybernetics, March 2011. DOI: 10.1007/s1 3042-011-0014 -3.

Shumei Zhang, Paul McCullagh, Chris Nugent, Huiru Zheng and Matthias Baumgarten, “Optimal model selection for posture recognition in home-based healthcare”, International Journal of Machine Learning and Cybernetics, Vol. 2, No. 1, pp. 1-14, 2011.

Yi Tang, Pingkun Yan, Yuan Yuan and Xuelong Li, “Single-image super-resolution via local learning”, International Journal of Machine Learning and Cybernetics, Vol. 2, No. 1, pp. 15-23, 2011.

Fadi N Karameh, Munther A. Dahleh, “Automated classification of EEG/ECG signals in tumor diagnostic” , Proceedings of American control conference, Chicago, Illinois, June 2012.

R. Verleger, T, Gasser, & J. Mocks, “Correlation of EOG artifacts in eventrelated potentials of EEG: Aspects of reliability and validity” , psychophysiology, Vol. 9, pp 472-480,2011.

M. Murugesan, Mrs. R. Sukanesh “ Towards Detection of Brain Tumor in Electroencephalogram Signals using Support Vector Machines”, International Journal of Computer Theory and Engineering, Vol. 1 No.5, December 2011.

Shane M. Haas, Mark G. Frei, Ivan Osorio, Bozenna Pasik-Duncan, & Jeff Radel, “EEG ocular artifact removal through ARMAX model system identification using extended least squares”, Communication in Information and Systems , 3,(1), pp 19-40, 2003.

Downloads

Published

30-03-2015

Issue

Section

Research Articles

How to Cite

[1]
“Detection of Brain Tumor in EEG Signals Using Independent Component Analysis”, J. Appl. Methods Electron. Comput., vol. 3, no. 2, pp. 78–82, Mar. 2015, doi: 10.18100/ijamec.80354.

Similar Articles

71-80 of 126

You may also start an advanced similarity search for this article.