4.7 Article

A Computational-Model-Based Study of Supervised Haptics-Enabled Therapist-in-the-Loop Training for Upper-Limb Poststroke Robotic Rehabilitation

期刊

IEEE-ASME TRANSACTIONS ON MECHATRONICS
卷 23, 期 2, 页码 563-574

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMECH.2018.2806918

关键词

Bio-signal processing; haptics; learning from demonstration; machine learning; neural networks; rehabilitation robotics; telerobotic rehabilitation

资金

  1. Canadian Institutes of Health Research under the CHRP Grant [316170]
  2. Natural Sciences and Engineering Research Council of Canada under the CHRP Grant [316170]
  3. Quanser Inc.
  4. AGE-WELL Network of Centres of Excellence [AW CRP 2015-WP5.3]

向作者/读者索取更多资源

This paper proposes a new framework for neural-network-based supervised training of intensity and strategy for upper-limb haptics-enabled robotic neurorehabilitation systems for poststroke motor disabilities. Two alternative approaches are implemented: 1) Haptics-enabled Teleoperated Supervised Training (HTST); and 2) Electromyography-based Indirect Supervised Training (EIST). The design of both techniques includes two phases: 1) characterizing and learning the therapeutic intensity and strategy when a therapist delivers robotics-assisted rehabilitation to a patient (demonstration phase); and 2) enabling regeneration of the learned therapeutic behavior when the therapist is out of the loop, e.g., when she/he is working with another patient (regeneration phase). For the first phase, the HTST platform allows for direct transformation of the forces generated by the therapist to deliver rehabilitation at the patient side, and providing the therapist with direct force feedback. In contrast, EIST is an indirect platform that utilizes the posture of the therapist for generation of rehabilitation forces. EIST uses vibration to the therapist's arm to make the therapist aware of the forces applied to the patient's hand. Although HTST is a more intuitive alternative, EIST is safer, portable, wearable, less expensive, and provides relative motion freedom for the therapist. The proposed training framework is motivated by the existing challenge regarding the need for tuning the strategy and intensity of robotic rehabilitation systems in a patient-specific manner. It also enables therapists to share their time between several patients. Experimental results are presented to evaluate the engineering aspects of the work and feasibility of the concept, where a computational model is used to simulate motor disability of a poststroke patient.

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