Predicting Knee Adduction Moment Response to Gait Retraining
2022
Miscellaneous
hi
Personalized gait retraining has shown promise as a conservative intervention for slowing knee osteoarthritis (OA) progression [1,2]. Changing the foot progression angle is an easy-to-learn gait modification that often reduces the knee adduction moment (KAM), a correlate of medial joint loading. Deployment to clinics is challenging, however, because customizing gait retraining still requires gait lab instrumentation. Innovation in wearable sensing and vision-based motion tracking could bring lab-level accuracy to the clinic, but current markerless motion-tracking algorithms cannot accurately assess if gait retraining will reduce someone's KAM by a clinically meaningful margin. To assist clinicians in determining if a patient will benefit from toe-in gait, we built a predictive model to estimate KAM reduction using only measurements that can be easily obtained in the clinic.
Author(s): | Nataliya Rokhmanova and Katherine J. Kuchenbecker and Peter B. Shull and Reed Ferber and Eni Halilaj |
Year: | 2022 |
Month: | August |
Department(s): | Haptic Intelligence |
Research Project(s): |
Gait Rehabilitation Through Haptic Feedback
|
Bibtex Type: | Miscellaneous (misc) |
Paper Type: | Abstract |
Address: | Ottawa, Canada |
How Published: | Extended abstract presented at North American Congress of Biomechanics (NACOB) |
State: | Published |
BibTex @misc{Rokhmanova22-NACOBEA-Predicting, title = {Predicting Knee Adduction Moment Response to Gait Retraining}, author = {Rokhmanova, Nataliya and Kuchenbecker, Katherine J. and Shull, Peter B. and Ferber, Reed and Halilaj, Eni}, howpublished = {Extended abstract presented at North American Congress of Biomechanics (NACOB)}, address = {Ottawa, Canada}, month = aug, year = {2022}, doi = {}, month_numeric = {8} } |