4.7 Article

A Machine-Learning Model for Automatic Detection of Movement Compensations in Stroke Patients

Journal

IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING
Volume 9, Issue 3, Pages 1234-1247

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TETC.2020.2988945

Keywords

Stroke (medical condition); Classification algorithms; Task analysis; Tools; Support vector machines; Feature extraction; Machine learning; Compensations; machine learning; multi-label classification; RAkEL algorithm; random forest; stroke rehabilitation; time series

Funding

  1. Helmsley Charitable Trust through the Agricultural, Biological and Cognitive Robotics Initiative at the Ben-Gurion University of the Negev
  2. Marcus Endowment Fund at the Ben-Gurion University of the Negev
  3. Rosetrees Trust
  4. Consolidated AntiAging Foundation
  5. Borten Family Foundation
  6. Israel Science Foundation [535/16, 2166/16]
  7. Israel National Insurance Institute
  8. European Union [754340]

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During the rehabilitation process after stroke, it is crucial for patients to know how well they are performing their exercises in order to improve. A machine-learning-based automated model has been developed in this study to provide accurate information on compensatory movements made by stroke patients during exercise, which can be used in both clinical and at-home exercise programs.
During the process of rehabilitation after stroke, it is important that patients know how well they perform their exercise, so they can improve their performance in future repetitions. Standard clinical rating conducted by human observation is the prevailing way today to monitor motor recovery of the patient. Therefore, patients cannot know whether they are performing a movement properly while exercising by themselves. Adhering to the exercise regime makes the rehabilitation process more effective and efficient, and thus a system that can give the patients feedback on their performance is of great value. Here, we built a machine-learning-based automated model that gives patients accurate information on the compensatory (undesirable) movements that they make. To construct the model, we recorded movements from 30 stroke patients, who each performed 18 movements, used to identify the presence of six types of compensatory movements in stroke patients' movement trajectories. We used the random-forest algorithm for training this multi-label classification model. We achieved 85 percent average precision across the six movement compensations. This is the first study to automatically identify movement compensations based on stroke patients' data. This model can be adapted for use in in-clinic and at-home exercise programs for patients after stroke.

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