Pattern Mining of Multichannel sEMG for Tremor Classification

Tremor is defined as the involuntary rhythmic or quasi-rhythmic oscillation of a body part, resulting from alternating or simultaneous contractions of antagonistic muscle groups. While tremor may be physiological, those who have disabling pathological tremors find that performing typical activities for daily living to be physically challenging and emotionally draining. Detecting the presence of tremor and its proper identification are crucial in prescribing the appropriate therapy to lessen its deleterious physical, emotional, psychological, and social impact. While diagnosis relies heavily on clinical evaluation, pattern analysis of surface electromyogram (sEMG) signals can be a useful diagnostic aid for an objective identification of tremor types. Using sEMG system attached to several parts of the patient's body while performing several tasks, this research aims to develop a classifier system that automates the process of tremor types recognition. Finding the optimal model and its corresponding parameters is not a straightforward process. The resulting workflow, however, provides valuable information in understanding the interplay and impact of the different features and their parameters to the behavior and performance of the classifier system. The resulting model analysis helps identify the necessary locations for the placement of sEMG electrodes and relevant features that have significant impact in the process of classification. These information can help clinicians in streamlining the process of diagnosis without sacrificing its accuracy.

[1]  Magnus Johnsson,et al.  Diagnosing Parkinson by using artificial neural networks and support vector machines , 2009 .

[2]  David Barber,et al.  Bayesian Classification With Gaussian Processes , 1998, IEEE Trans. Pattern Anal. Mach. Intell..

[3]  Erkki Oja,et al.  Independent component analysis: algorithms and applications , 2000, Neural Networks.

[4]  Mustafa Yilmaz,et al.  Classification of EMG signals using wavelet neural network , 2006, Journal of Neuroscience Methods.

[5]  Huosheng Hu,et al.  Support Vector Machine-Based Classification Scheme for Myoelectric Control Applied to Upper Limb , 2008, IEEE Transactions on Biomedical Engineering.

[6]  Habib-ur-Rehman,et al.  Diagnosis and management of tremor. , 2000, Archives of internal medicine.

[7]  J. Schulz,et al.  Long-term EMG recordings differentiate between parkinsonian and essential tremor , 2008, Journal of Neurology.

[8]  A. Kamondi,et al.  Asymmetry of tremor intensity and frequency in Parkinson's disease and essential tremor. , 2006, Parkinsonism & related disorders.

[9]  Christopher M. Bishop,et al.  Neural networks for pattern recognition , 1995 .

[10]  Hans-Paul Schwefel,et al.  Evolution strategies – A comprehensive introduction , 2002, Natural Computing.

[11]  Sabri Koçer,et al.  Use of Support Vector Machines and Neural Network in Diagnosis of Neuromuscular Disorders , 2005, Journal of Medical Systems.

[12]  John H. Holland,et al.  Adaptation in Natural and Artificial Systems: An Introductory Analysis with Applications to Biology, Control, and Artificial Intelligence , 1992 .

[13]  R. D. Fusfeld,et al.  Classification of the electromyogram by a pattern-recognition method , 1982, Medical and Biological Engineering and Computing.

[14]  R. Elble Tremor: clinical features, pathophysiology, and treatment. , 2009, Neurologic clinics.

[15]  Toshio Tsuji,et al.  Pattern classification of time-series EMG signals using neural networks , 2000 .

[16]  Nir Giladi,et al.  Subdivision of essential tremor patients according to physiologic characteristics , 2004, Acta neurologica Scandinavica.

[17]  S H Park,et al.  EMG pattern recognition based on artificial intelligence techniques. , 1998, IEEE transactions on rehabilitation engineering : a publication of the IEEE Engineering in Medicine and Biology Society.

[18]  D K Kumar,et al.  Neural networks and wavelet decomposition for classification of surface electromyography. , 2000, Electromyography and clinical neurophysiology.

[19]  Toshio Tsuji,et al.  A Recurrent Probabilistic Neural Network for EMG Pattern Recognition , 2006 .

[20]  Russell C. Eberhart,et al.  Human tremor analysis using particle swarm optimization , 1999, Proceedings of the 1999 Congress on Evolutionary Computation-CEC99 (Cat. No. 99TH8406).

[21]  K. Strimmer,et al.  Feature selection in omics prediction problems using cat scores and false nondiscovery rate control , 2009, 0903.2003.

[22]  F. Mohd-Yasin,et al.  Techniques of EMG signal analysis: detection, processing, classification and applications , 2006, Biological Procedures Online.

[23]  Andreeva YeA,et al.  Application EMGs spectral analysis method for the objective diagnosis of different clinical forms of Parkinson's disease. , 1996, Electromyography and clinical neurophysiology.

[24]  Stanisław Pietraszek,et al.  Analysis of selected parameters of tremor recorded by a biaxial accelerometer in patients with parkinsonian tremor, essential tremor and cerebellar tremor. , 2007, Neurologia i neurochirurgia polska.

[25]  D. Goodin,et al.  Ovid: Pullman: Neurology, Volume 55(2).July 25, 2000.171-177 , 2006 .

[26]  Mehran Jahed,et al.  Real-time intelligent pattern recognition algorithm for surface EMG signals , 2007, Biomedical engineering online.

[27]  Andreeva YeA,et al.  Application EMGs spectral analysis method for the objective diagnosis of different clinical forms of Parkinson's disease. , 1996 .

[28]  M. Aizerman,et al.  Theoretical Foundations of the Potential Function Method in Pattern Recognition Learning , 1964 .

[29]  Jue Wang,et al.  Hand Tremor Classification Using Bispectrum Analysis of Acceleration Signals and Back-Propagation Neural Network , 2007, ISNN.

[30]  Rajesh P. N. Rao,et al.  Real-Time Classification of Electromyographic Signals for Robotic Control , 2005, AAAI.

[31]  Marie-Françoise Lucas,et al.  Multi-channel surface EMG classification using support vector machines and signal-based wavelet optimization , 2008, Biomed. Signal Process. Control..

[32]  S. Fahn Members of the UPDRS Development Committee. Unified Parkinson's Disease Rating Scale , 1987 .

[33]  J. Friedman Regularized Discriminant Analysis , 1989 .

[34]  Bernhard E. Boser,et al.  A training algorithm for optimal margin classifiers , 1992, COLT '92.

[35]  B. Freriks,et al.  Development of recommendations for SEMG sensors and sensor placement procedures. , 2000, Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology.

[36]  J M Dambrosia,et al.  Accelerometry to distinguish psychogenic from essential or parkinsonian tremor , 2003, Neurology.

[37]  M. Smeja,et al.  Joint amplitude and frequency analysis of tremor activity. , 1999, Electromyography and clinical neurophysiology.

[38]  Mehmet Engin,et al.  The classification of human tremor signals using artificial neural network , 2007, Expert Syst. Appl..

[39]  D F Stegeman,et al.  Recent progress in the diagnostic use of surface EMG for neurological diseases. , 2000, Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology.

[40]  M. Rudzińska,et al.  Quantitative tremor measurement with the computerized analysis of spiral drawing. , 2007, Neurologia i neurochirurgia polska.

[41]  R. Elble,et al.  Quantification of essential tremor in writing and drawing , 1996, Movement disorders : official journal of the Movement Disorder Society.

[42]  Sabri Koçer,et al.  Classification of EMG Signals Using PCA and FFT , 2005, Journal of Medical Systems.

[43]  E W Abel,et al.  Neural network analysis of the EMG interference pattern. , 1996, Medical engineering & physics.

[44]  Stanislaw Osowski,et al.  Higher order statistics and neural network for tremor recognition , 2002, IEEE Transactions on Biomedical Engineering.

[45]  J Dichgans,et al.  Validity of long‐term electromyography in the quantification of tremor , 1997, Movement disorders : official journal of the Movement Disorder Society.

[46]  Abraham Kandel,et al.  Fuzzy methods in tremor assessment, prediction, and rehabilitation , 2001, Artif. Intell. Medicine.

[47]  Jue Wang,et al.  Multi-features fusion diagnosis of tremor based on artificial neural network and D-S evidence theory , 2008, Signal Process..