Detection of different brain diseases from EEG signals using hidden markov model

Автор: Md. Hasin R. Rabbani, Sheikh Md. Rabiul Islam

Журнал: International Journal of Image, Graphics and Signal Processing @ijigsp

Статья в выпуске: 10 vol.11, 2019 года.

Бесплатный доступ

The brain imaging device, Electroencephalography (EEG) provides several advantages over other brain signals like Functional Near-infrared Spectroscopy (fNIRS) and Functional Magnetic Resonance Imaging (fMRI). It is non-invasive and easily applicable. EEG provides high temporal resolution with a low setup cost. EEG signals of several subjects which record electric potential caused by neurons firing in the brain are undergone a Hidden Markov Model (HMM) classification technique. We are particularly interested to detect the brain diseases from EEG signals by an HMM probabilistic model. This HMM model is built with a given initial probability matrix of five different states, namely, epilepsy, seizure, dementia, stroke and normality. The transition probability matrix is updated after each iteration of parameter estimation using Baum-Welch algorithm (B-W algorithm).

Еще

Electroencephalography (EEG), Hidden Markov Model (HMM), Baum-Welch algorithm (B-W algorithm), Initial probability matrix, Transition probability matrix

Короткий адрес: https://sciup.org/15016087

IDR: 15016087   |   DOI: 10.5815/ijigsp.2019.10.03

Список литературы Detection of different brain diseases from EEG signals using hidden markov model

  • M. Lasfar, H.Bouden, “A method of data mining using Hidden Markov Models (HMMs) for protein secondary structure prediction,” Procedia Computer Science 127, pp. 42-51, 2018.
  • R. Mouhcine, A. Mustapha, M. Zouhir, “Recognition of cursive Arabic handwritten text using embedded training based on HMMs,” Journal of Electrical Systems and Information Technology 5, pp. 245-251, 2018.
  • A.S. Dhawan, J. Kosecka, H. Rangwala, S. Sikdar, “An intuitive muscle-computer interface using ultrasound sensing and Markovian state transitions,” 2018 IEEE 15th International Symposium on Biomedical Imaging, April 4-7, 2018.
  • J. Li, T. Lei, F. Zhang, “An Gaussian-Mixture Hidden Markov Models for Action Recognition Based on Key Frame,” 11th International Congress on Image and Signal Processing, BioMedical Engineering and Informatics (CISP-BMEI), 2018.
  • H. Tan, P. Fischer, S. A. Shah, D. Vidaurre, M. W. Woolrich, P. Brown, “ Decoding Movement States in Stepping Cycles based on Subthalamic LFPs in Parkinsonian Patients,” IEEE, pp. 1384-1387, 2018.
  • E. Rabhi, Z. Lachiri, “Personal identification system using physiological signal,” IEEE 4th Middle East Conference on Biomedical Engineering (MECBME), pp. 153-158, 2018.
  • T. A. W. Bolton, A. Tarun, V. Sterpenich, S. Schwartz, D. M. D. Ville, “Interactions Between Large-Scale Functional Brain Networks are Captured by Sparse Coupled HMMs,” IEEE Transactions on Medical Imaging, Vol. 37, No. 1, pp. 230-240, January 2018.
  • D. Oletic, V. Bilas, “Asthmatic Wheeze Detection from Compressively Sensed Respiratory Sound Spectra,” IEEE Journal of Biomedical and Health Informatics, 2017.
  • I. Sgouralis, S.Presse, “An Introduction to Infinite HMMs for Single-Molecule Data Analysis,” Biophysical Journal 112, pp. 2021-2029, May 23, 2017.
  • S. Ghosh, J. Li, L. Cao, K. Ramamohanarao, “Septic shock prediction for ICU patients via coupled HMM walking on sequential contrast patterns,” Journal of Biomedical Informatics 66, pp. 19-31, 2017.
  • M. H. Rahmani, F. Almasganj, “Lip-reading via a DNN-HMM Hybrid System Using Combination of The Image-based and Model-based Features,” 3rd International Conference on Pattern Recognition and Image Analysis, pp. 195-199, April 19-20, 2017.
  • S. Yu, H. Chen, R. A. Brown, “Hidden Markov Model-Based Fall Detection with Motion Sensor Orientation Calibration: A Case for Real-Life Home Monitoring,” IEEE Journal of Biomedical and Health Informatics, 2017.
  • K. Guo, H. Candra, H. Yu, H. Li, H. T. Nguyen, S. W. Su, “EEG-based Emotion Classification Using Innovative Features and Combined SVM and HMM Classifier,” IEEE, pp. 489-492, 2017.
  • T. Yang, W. Huang, Z. Jiang, C. K. Chui, L. Jiang, “ Stacked Hidden Markov Model for Motion Intention Recognition,” IEEE 2nd International Conference on Signal and Image Processing, pp. 266-271, 2017.
  • M. Mohammadpour, V. Rahmani, “A Hidden Markov Model-Based Approach to Removing EEG Artifact,” 5th Iranian Joint Congress on Fuzzy and Intelligent Systems (CFIS), pp. 46-49, 2017.
  • J. Wahlstrom, I. Skog, P. Handel, F. Khosrow-khavar, K. Tavakolian, P. K. Stein, A. Nehorai, “A Hidden Markov Model for Seismocardiography,” IEEE Transactions on Biomedical Engineering, 2017.
  • S. M. Bhatti, M. S. Khan, J. Wuth, F. Huenupan, M. Curilem, L. Franco, N. B. Yoma, “Automatic detection of volcano-seismic events by modeling state and event duration in hidden Markov models,” Journal of Volcanology and Geothermal Research 324, pp. 134-143, 2016.
  • J. C. Kao, P. Nuyujukian, S. I. Ryu, K. V. Shenoy, “A high-performance neural prosthesis incorporating discrete state selection with hidden Markov models,” IEEE Transactions on Biomedical Engineering, 2016.
  • C. Song, K. Liu, X. Zhang, L. Chen, X. Xian, “An Obstructive Sleep Apnea Detection Approach Using a Discriminative Hidden Markov Model from ECG Signals,” IEEE Transactions on Biomedical Engineering, 2015.
  • P. Ambrosini, I. Smal, D. Ruijters, W. J. Niessen, A. Moelker, T. V. Walsum, “A Hidden Markov Model for 3D Catheter Tip Tracking With 2D X-ray Catheterization Sequence and 3D Rotational Angiography,” IEEE Transactions on Medical Imaging, Vol. 36, pp. 757-768, March 2017.
  • K. M. Vamsikrishna, D. P. Dogra, M. S. Desarkar, “Computer-Vision-Assisted Palm Rehabilitation With Supervised Learning,” IEEE Transactions on Biomedical Engineering, Vol. 63, pp. 991-1001, May 2016.
  • R. V. Andreao, B. Dorizzi and J. Boudy, "ECG signal analysis through hidden Markov models," in IEEE Transactions on Biomedical Engineering, vol. 53, no. 8, pp. 1541-1549, Aug. 2006.
  • N. Naseer, K.S. Hong, “fNIRS-based brain-computer interfaces: a review”, Frontiers in Human Neuroscience, Volume 9, Article 3, pp. 6-7, January 2015.
  • L.M. Hirshfield, “Combining Electroencephalograph and Functional Near Infrared Spectroscopy to Explore Users” Mental Workload. In: Schmorrow D.D., Estabrooke I.V., Grootjen M. (eds) Foundations of Augmented Cognition. Neuroergonomics and Operational Neuroscience. FAC 2009. Lecture Notes in Computer Science, vol 5638. Springer, Berlin, Heidelberg.
  • Yuzhen Ye, “HMM: Parameter Estimation”, I529: Machine Learning in Bioinformatics, pp. 14-23, Spring 2013.
  • A. Harati, S. López, I. Obeid, J. Picone, M. P. Jacobson and S. Tobochnik, "The TUH EEG CORPUS: A big data resource for automated EEG interpretation," 2014 IEEE Signal Processing in Medicine and Biology Symposium (SPMB), Philadelphia, PA, 2014, pp. 1-5.
  • A. Khorasani, M.R. Daliri, “HMM for Classification of Parkinson’s Disease Based on the Raw Gait Data”, J Med Syst. 2014 Dec;38(12):147
  • Y. Wu and S. Krishnan, "Statistical Analysis of Gait Rhythm in Patients With Parkinson's Disease," in IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol. 18, no. 2, pp. 150-158, April 2010.
  • B. Resch, “Hidden Markov Models: A Tutorial for the Course Computational Intelligence”, Signal Processing and Speech Communication Laboratory, Inffeldgasse 16c, pp.1-14.
  • A. Gabell, U. Nayak, “The effect of age on variability in gait”, Journal of Gerontology, vol. 39, no. 6, pp. 662-666, 1984.
Еще
Статья научная