4.6 Article

A Rehabilitation-Internet-of-Things in the Home to Augment Motor Skills and Exercise Training

期刊

NEUROREHABILITATION AND NEURAL REPAIR
卷 31, 期 3, 页码 217-227

出版社

SAGE PUBLICATIONS INC
DOI: 10.1177/1545968316680490

关键词

accelerometry; mHealth; wearable sensors; self-management; physical therapy; stroke rehabilitation; exercise; motor learning

资金

  1. American Heart Association-Bugher Foundation [14BFSC17810004]
  2. National Institutes of Health [HD071809]
  3. Dr. Miriam and Sheldon G. Adelson Medical Research Foundation
  4. Stolper Family Foundation
  5. Frieden Foundation

向作者/读者索取更多资源

Although motor learning theory has led to evidence-based practices, few trials have revealed the superiority of one theory-based therapy over another after stroke. Nor have improvements in skills been as clinically robust as one might hope. We review some possible explanations, then potential technology-enabled solutions. Over the Internet, the type, quantity, and quality of practice and exercise in the home and community can be monitored remotely and feedback provided to optimize training frequency, intensity, and progression at home. A theory-driven foundation of synergistic interventions for walking, reaching and grasping, strengthening, and fitness could be provided by a bundle of home-based Rehabilitation Internet-of-Things (RIoT) devices. A RIoT might include wearable, activity-recognition sensors and instrumented rehabilitation devices with radio transmission to a smartphone or tablet to continuously measure repetitions, speed, accuracy, forces, and temporal spatial features of movement. Using telerehabilitation resources, a therapist would interpret the data and provide behavioral training for self-management via goal setting and instruction to increase compliance and long-term carryover. On top of this user-friendly, safe, and conceptually sound foundation to support more opportunity for practice, experimental interventions could be tested or additions and replacements made, perhaps drawing from virtual reality and gaming programs or robots. RIoT devices continuously measure the actual amount of quality practice; improvements and plateaus over time in strength, fitness, and skills; and activity and participation in home and community settings. Investigators may gain more control over some of the confounders of their trials and patients will have access to inexpensive therapies.

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