Affiliation:
1. Department of Computer Engineering, Gachon University, Sujeong-gu, Seongnam-si 461-701, Gyeonggi-do, Republic of Korea
Abstract
This extensive review examines sarcopenia, a condition characterized by a loss of muscle mass, stamina, and physical performance, with a particular emphasis on its detection and management using contemporary technologies. It highlights the lack of global agreement or standardization regarding the definition of sarcopenia and the various techniques used to measure muscle mass, stamina, and physical performance. The distinctive criteria employed by the European Working Group on Sarcopenia in Older People (EWGSOP) and the Asian Working Group for Sarcopenia (AWGSOP) for diagnosing sarcopenia are examined, emphasizing potential obstacles in comparing research results across studies. The paper delves into the use of machine learning techniques in sarcopenia detection and diagnosis, noting challenges such as data accessibility, data imbalance, and feature selection. It suggests that wearable devices, like activity trackers and smartwatches, could offer valuable insights into sarcopenia progression and aid individuals in monitoring and managing their condition. Additionally, the paper investigates the potential of blockchain technology and edge computing in healthcare data storage, discussing models and systems that leverage these technologies to secure patient data privacy and enhance personal health information management. However, it acknowledges the limitations of these models and systems, including inefficiencies in handling large volumes of medical data and the lack of dynamic selection capability. In conclusion, the paper provides a comprehensive summary of current sarcopenia research, emphasizing the potential of modern technologies in enhancing the detection and management of the condition while also highlighting the need for further research to address challenges in standardization, data management, and effective technology use.
Funder
Gachon University Research Fund
Ministry of Education of the Republic of Korea
Subject
Health Information Management,Health Informatics,Health Policy,Leadership and Management
Reference120 articles.
1. Supriya, R., Singh, K.P., Gao, Y., Li, F., Dutheil, F., and Baker, J.S. (2021). A multifactorial approach for sarcopenia assessment: A literature review. Biology, 10.
2. Liao, H., Yang, Y., Zeng, Y., Qiu, Y., Chen, Y., Zhu, L., Fu, P., Yan, F., Chen, Y., and Yuan, H. (2023). Use machine learning to help identify possible sarcopenia cases in maintenance hemodialysis patients. BMC Nephrol., 24.
3. Amalgamation of Blockchain with resource-constrained IoT devices for Healthcare applications–State of Art, Challenges and Future Directions;Hegde;Int. J. Cogn. Comput. Eng.,2023
4. Between-study differences in grip strength: A comparison of Norwegian and Russian adults aged 40–69 years;Cooper;J. Cachexia Sarcopenia Muscle,2021
5. Hand grip strength measurement in different epidemiologic studies using various methods for diagnosis of sarcopenia: A systematic review;Ha;Eur. Geriatr. Med.,2018
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