EMG signal morphology and kinematic measurements in essential tremor and Parkinson’s disease patients

Journal of Electromyography and Kinesiology 2014:24(2):300–206 – V. Ruonala, A. Meigal, S. Rissanen, O. Airaksinen, M. Kankaanpää, P. Karjalainen

The aim of this work was to differentiate patients with essential tremor from patients with Parkinson’s disease. Electromyographic data from biceps brachii muscles and kinematic data from arms during isometric tension of the arms were measured from 17 patients with essential tremor, 35 patients with Parkinson’s disease and 40 healthy controls.

The EMG signals were divided to smaller segments from which histograms were calculated. The histogram shape was analysed with a feature dimension reduction method, the principal component analysis, and the shape parameters were used to differentiate between different subject groups. Three parameters, RMS-amplitude, sample entropy and peak frequency were determined from the kinematic measurements of the arms.

The height and the side differences of the histogram were the most effective for differentiating between essential tremor and Parkinson’s disease groups. The histogram parameters of patients with essential tremor were more similar to patients with Parkinson’s disease than healthy controls. With this method it was possible to discriminate 13/17 patients with essential tremor from 26/35 patients with Parkinson’s disease and 14/17 patients with essential tremor from 29/40 healthy controls. The kinematic parameters of patients with essential tremor were closer to parameters of patients with Parkinson’s disease compared to healthy controls. Combining EMG and kinematic analysis did not increase discrimination efficiency but provided more reliability to the discrimination of subject groups.

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Novel sEMG parameters for early diagnostics of neurological diseases and aging

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Nonlinear EMG parameters for differential and early diagnostics of Parkinson’s disease