Abstract:
Sarcopenia, defined by a gradual loss of muscle
mass and function, affects many elderly people and is associated
with reduced mobility, greater frailty, and a higher risk of
falling. Using a vision attentive model and integrating the
embedded Timed Up and Go Test (TUG-T), 3-meter Walk Test
(3mW-T), and fall risk analysis, this research proposes a unique
method for assessing sarcopenia in elderly people. The attentive
vision model uses computer vision techniques to examine TUG
activities and gait speed in real-time, offering insightful
information about the elderly's the functional ability and
muscular strength. Moreover, this approach provides a more
comprehensive assessment of sarcopenia by integrating falling
risk analysis. The proposed system achieved an overall accuracy
of 86.6%, outperforming the individual components: TUG test
(84.0%, p<0.05), gait speed (88.2%, p<0.05), and fallen risk
assessment (93.0%, p<0.05). The results indicate that this novel
strategy has enormous potential for aged healthcare, enabling
targeted therapies and enhancing the overall quality of life for
older people at risk of issues connected to sarcopenia.
Citation:
H. M. K. K. M. B. Herath, A. G. B. P. Jayasekara, B. G. D. A. Madhusanka and G. M. K. B. Karunasena, "Non-Invasive Tools for Early Detection and Monitoring of Sarcopenia in Older Individuals," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 219-224, doi: 10.1109/MERCon60487.2023.10355475.