Accurate Prediction of Knee Angles during Open-Chain Rehabilitation Exercises Using a Wearable Array of Nanocomposite Stretch Sensors.
David S WoodKurt JensenAllison CraneHyunwook LeeHayden DennisJoshua GladwellAnne ShurtzDavid T FullwoodMatthew K SeeleyUlrike H MitchellWilliam F ChristensenAnton E BowdenPublished in: Sensors (Basel, Switzerland) (2022)
In this work, a knee sleeve is presented for application in physical therapy applications relating to knee rehabilitation. The device is instrumented with sixteen piezoresistive sensors to measure knee angles during exercise, and can support at-home rehabilitation methods. The development of the device is presented. Testing was performed on eighteen subjects, and knee angles were predicted using a machine learning regressor. Subject-specific and device-specific models are analyzed and presented. Subject-specific models average root mean square errors of 7.6 and 1.8 degrees for flexion/extension and internal/external rotation, respectively. Device-specific models average root mean square errors of 12.6 and 3.5 degrees for flexion/extension and internal/external rotation, respectively. The device presented in this work proved to be a repeatable, reusable, low-cost device that can adequately model the knee's flexion/extension and internal/external rotation angles for rehabilitation purposes.
Keyphrases
- total knee arthroplasty
- low cost
- knee osteoarthritis
- anterior cruciate ligament
- anterior cruciate ligament reconstruction
- machine learning
- high resolution
- patient safety
- resistance training
- emergency department
- physical activity
- high intensity
- blood pressure
- deep learning
- quantum dots
- artificial intelligence
- body composition
- quality improvement