Machine learning-based muscle mass estimation using gait parameters in community-dwelling older adults: A cross-sectional study

Archives of Gerontology and Geriatrics - Tập 103 - Trang 104793 - 2022
Kosuke Fujita1,2, Takahiro Hiyama3, Kengo Wada4, Takahiro Aihara4, Yoshihiro Matsumura4, Taichi Hamatsuka4, Yasuko Yoshinaka5, Misaka Kimura5,6, Masafumi Kuzuya1
1Department of Community Healthcare and Geriatrics, Graduate School of Medicine, Nagoya University, Nagoya, Japan
2Department of Prevention and Care Science, Center for Development of Advanced Medicine for Dementia, National Center for Geriatrics and Gerontology, Obu, Japan
3Technology Division, Panasonic Holdings Corporation, Kadoma, Japan
4Electric Works Company, Panasonic Corporation, Kadoma, Japan
5Department of Bioenvironment, Kyoto University of Advanced Science, Kameoka, Japan
6Doshisha Women's College of Liberal Arts, Graduate School of Nursing, Kyotanabe, Japan

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