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Model-Oriented Methodology for Developing a Social Based Healthcare System

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Published:16 November 2020Publication History

ABSTRACT

Globally, the number of dependent elderly people is expected to increase significantly in the coming years. This increase requires the need to develop remote health care monitoring systems to meet the major challenges associated with aging. These issues are at the same time social, economic and above all ethical for our society. The elderly are more susceptible to multiple morbidity, loss of autonomy and also vulnerability. In this context, we present our solution, the Family Heroes System, related to the field of remote healthcare. Due to its critical and complex nature, developing such system requires to adopt a model oriented approach. This paper presents a methodology based on CATWOE and UML to analyze and model Family Heroes System.

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          • Published in

            cover image ACM Conferences
            Q2SWinet '20: Proceedings of the 16th ACM Symposium on QoS and Security for Wireless and Mobile Networks
            November 2020
            139 pages
            ISBN:9781450381208
            DOI:10.1145/3416013
            • General Chair:
            • Cheng Li,
            • Program Chair:
            • Ahmed Mostefaoui

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            New York, NY, United States

            Publication History

            • Published: 16 November 2020

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