A Review of Computational Approaches for Evaluation of Rehabilitation
Exercises
- URL: http://arxiv.org/abs/2003.08767v2
- Date: Fri, 20 Mar 2020 02:55:34 GMT
- Title: A Review of Computational Approaches for Evaluation of Rehabilitation
Exercises
- Authors: Yalin Liao, Aleksandar Vakanski, Min Xian, David Paul, Russell Baker
- Abstract summary: This paper reviews computational approaches for evaluating patient performance in rehabilitation programs using motion capture systems.
The reviewed computational methods for exercise evaluation are grouped into three main categories: discrete movement score, rule-based, and template-based approaches.
- Score: 58.720142291102135
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent advances in data analytics and computer-aided diagnostics stimulate
the vision of patient-centric precision healthcare, where treatment plans are
customized based on the health records and needs of every patient. In physical
rehabilitation, the progress in machine learning and the advent of affordable
and reliable motion capture sensors have been conducive to the development of
approaches for automated assessment of patient performance and progress toward
functional recovery. The presented study reviews computational approaches for
evaluating patient performance in rehabilitation programs using motion capture
systems. Such approaches will play an important role in supplementing
traditional rehabilitation assessment performed by trained clinicians, and in
assisting patients participating in home-based rehabilitation. The reviewed
computational methods for exercise evaluation are grouped into three main
categories: discrete movement score, rule-based, and template-based approaches.
The review places an emphasis on the application of machine learning methods
for movement evaluation in rehabilitation. Related work in the literature on
data representation, feature engineering, movement segmentation, and scoring
functions is presented. The study also reviews existing sensors for capturing
rehabilitation movements and provides an informative listing of pertinent
benchmark datasets. The significance of this paper is in being the first to
provide a comprehensive review of computational methods for evaluation of
patient performance in rehabilitation programs.
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