Information (Feb 2022)

Automatic Hemiplegia Type Detection (Right or Left) Using the Levenberg-Marquardt Backpropagation Method

  • Vasileios Christou,
  • Alexandros Arjmand,
  • Dimitrios Dimopoulos,
  • Dimitrios Varvarousis,
  • Ioannis Tsoulos,
  • Alexandros T. Tzallas,
  • Christos Gogos,
  • Markos G. Tsipouras,
  • Evripidis Glavas,
  • Avraam Ploumis,
  • Nikolaos Giannakeas

DOI
https://doi.org/10.3390/info13020101
Journal volume & issue
Vol. 13, no. 2
p. 101

Abstract

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Hemiplegia affects a significant portion of the human population. It is a condition that causes motor impairment and severely reduces the patient’s quality of life. This paper presents an automatic system for identifying the hemiplegia type (right or left part of the body is affected). The proposed system utilizes the data taken from patients and healthy subjects using the accelerometer sensor from the RehaGait mobile gait analysis system. The collected data undergo a pre-processing procedure followed by a feature extraction stage. The extracted features are then sent to a neural network trained by the Levenberg-Marquardt backpropagation (LM-BP) algorithm. The experimental part of this research involved creating a custom-created dataset containing entries taken from ten healthy and twenty non-healthy subjects. The data were taken from seven different sensors placed in specific areas of the subjects’ bodies. These sensors can capture a three-dimensional (3D) signal using the accelerometer, magnetometer, and gyroscope device types. The proposed system used the signals taken from the accelerometers, which were split into 2-sec windows. The proposed system achieved a classification accuracy of 95.12% and was compared with fourteen commonly used machine learning approaches.

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