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Feature extraction and gait classification in hip replacement patients on the basis of kinematic waveform data Cover

Feature extraction and gait classification in hip replacement patients on the basis of kinematic waveform data

Open Access
|Jun 2021

Abstract

Study aim: To find out, without relying on gait-specific assumptions or prior knowledge, which parameters are most important for the description of asymmetrical gait in patients after total hip arthroplasty (THA).

Material and methods: The gait of 22 patients after THA was recorded using an optical motion capture system. The waveform data of the marker positions, velocities, and accelerations, as well as joint and segment angles, were used as initial features. The random forest (RF) and minimum-redundancy maximum-relevance (mRMR) algorithms were chosen for feature selection. The results were compared with those obtained from the use of different dimensionality reduction methods.

Results: Hip movement in the sagittal plane, knee kinematics in the frontal and sagittal planes, marker position data of the anterior and posterior superior iliac spine, and acceleration data for markers placed at the proximal end of the fibula are highly important for classification (accuracy: 91.09%). With feature selection, better results were obtained compared to dimensionality reduction.

Conclusion: The proposed approaches can be used to identify and individually address abnormal gait patterns during the rehabilitation process via waveform data. The results indicate that position and acceleration data also provide significant information for this task.

Language: English
Page range: 177 - 186
Submitted on: Feb 22, 2021
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Accepted on: Apr 16, 2021
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Published on: Jun 4, 2021
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2021 Carlo Dindorf, Wolfgang Teufl, Bertram Taetz, Stephan Becker, Gabriele Bleser, Michael Fröhlich, published by University of Physical Education in Warsaw
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.