Sonstiges: |
- Nachgewiesen in: MEDLINE
- Sprachen: English
- Publication Type: Journal Article
- Language: English
- [Med Biol Eng Comput] 2024 Apr; Vol. 62 (4), pp. 1061-1076. <i>Date of Electronic Publication: </i>2023 Dec 23.
- MeSH Terms: Algorithms* ; Humans ; Aged ; Motion ; Biomechanical Phenomena ; Healthy Volunteers
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- Grant Information: 2022YFC2009500 National Key Research and Development Program of China; 2022ND0AC01 Key Research Project of Zhejiang Lab
- Contributed Indexing: Keywords: Balance recovery model; Fall Point; Fall warning; Imbalance Point; Motion prediction
- Entry Date(s): Date Created: 20231223 Date Completed: 20240320 Latest Revision: 20240320
- Update Code: 20240320
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