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Learning Post-Stroke Gait Training Strategies by Modeling Patient-Therapist Interaction
Case ID:
M23-193L^
Web Published:
5/16/2024
Lower-extremity hemiparesis, characterized by weakness or partial paralysis on one side of the body, significantly impacts a vast majority of stroke survivors. As a result, physical therapy intervention is crucial for the successful recovery and rehabilitation of a patient's gait cycle. During these sessions, physical therapists implement corrective forces to the patient’s limb, aiding in gait retraining. This hands-on therapy serves as the primary treatment option for stroke survivors, due to the unique gait requirements for each patient. Previous attempts of creating a lower-limb exoskeleton have been attempted but often face challenges in their ability to tailor to each patient's specific needs.
Researchers at Arizona State University in collaboration with researchers at Barrow Neurological Institute have developed a virtual impedance model for predicting therapist faciliatory forces in gait rehabilitation. Working directly with physical therapists, the team utilized a wearable sensing system which includes a custom-made force sensing array to accurately measure the assistive forces applied to the patient’s leg. As a result, a virtual model was created to accurately capture high-level therapist behaviors over the course of a full training session.
This model provides a new approach to encode the decision-making process of physical therapists into a human-robot interaction framework for gait rehabilitation.
Potential Applications
Integration into robot-aided gait training devices
Benefits and Advantages
Automated decision-making process of physical therapists
Optimize treatment strategies for the individual patient
Advanced understanding of PT gait assistive strategies
Makes gait therapy more accessible and affordable for patients
May reduce the number of in-office visits with physical therapists
Reduces cost for patient
Allows for rehabilitation at home
Less labor-intensive
For more information about this opportunity, please see
Sorkhabadi et al – IEEE EMBS - 2023
For more information about the inventor(s) and their research, please see
Dr. Zhang's departmental webpage
Dr. Kwasnica's departmental webpage
Patent Information:
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Direct Link:
https://canberra-ip.technologypublisher.com/tech/Learning_Post-Stroke_Gait_Tr aining_Strategies_by_Modeling_Patient-Therapist_Interaction
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For Information, Contact:
Jovan Heusser
Director of Licensing and Business Development
Skysong Innovations
jovan.heusser@skysonginnovations.com