Frailty Insights Detection System (FIDS)—A Comprehensive and Intuitive Dashboard Using Artificial Intelligence and Web Technologies

Author:

Ciubotaru Bogdan-Iulian1ORCID,Sasu Gabriel-Vasilică2ORCID,Goga Nicolae3,Vasilățeanu Andrei3ORCID,Marin Iuliana3ORCID,Păvăloiu Ionel-Bujorel3ORCID,Gligore Claudiu Teodor Ion4

Affiliation:

1. Military Equipment and Technologies Research Agency (METRA), Ministry of National Defence, 077025 Clinceni, Romania

2. Faculty of Automatic Control and Computers, National University of Science and Technology Politehnica Bucharest, 060042 Bucharest, Romania

3. The Faculty of Engineering in Foreign Languages, National University of Science and Technology Politehnica Bucharest, 060042 Bucharest, Romania

4. National Institute of Medical Expertise and Recovery of Working Capacity, 077145 Pantelimon, Romania

Abstract

Frailty, known as a syndrome affecting the elderly, have a direct impact on both social well-being and body’s ability to function properly. Specific to geriatric healthcare, the early detection of frailty helps the specialists to mitigate risks of severe health outcomes. This article presents the development process of a system used to determine frailty-specific parameters, focusing on easy-to-use, non-intrusive nature and reliance on objectively measured parameters. The multitude of methodologies and metrics involved in frailty assessment emphasize the multidimensional aspects of this process and the lack of a common and widely accepted methodology as being the gold standard. After the research phase, the frailty-specific parameters considered are physical activity, energy expenditure, unintentional weight loss, and exhaustion, along with additional parameters like daily sedentary time, steps history, heart rate, and body mass index. The system architecture, artificial intelligence models, feature selection, and final prototype results are presented. The last section addresses the challenges, limitations, and future work related to the Frailty Insights Detection System (FIDS).

Funder

Romanian Ministry of Education and Research, CCC DI-UEFISCDI

cINnAMON project

Publisher

MDPI AG

Reference27 articles.

1. Rehman, A., Naz, S., and Razzak, I. (2022). Leveraging Big Data Analytics in Healthcare Enhancement: Trends, Challenges and Opportunities, Springer.

2. Dattani, S., Rodés-Guirao, L., Ritchie, H., Ortiz-Ospina, E., and Roser, M. (2024, July 07). Life Expectancy. Available online: https://ourworldindata.org/life-expectancy.

3. Strandberg, T.E., and Nieminen, T. (2020). Future Perspectives on the Role of Frailty in Cardiovascular Diseases, Springer.

4. Frailty in older adults: Evidence for a phenotype;Fried;J. Gerontol. A Biol. Sci. Med. Sci.,2001

5. Frailty: An Emerging Geriatric Syndrome;Ahmed;Am. J. Med.,2007

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