Integration of IoT and Data Visualization for Personalized Diabetes Management
A Technological Approach to Chronic Disease Care
DOI:
https://doi.org/10.47756/aihc.y9i1.178Keywords:
Data visualization, Diabetes, Chronic diseases, Medical devices, Biomarkers, Patient monitoringAbstract
This paper presents a framework for developing diabetes management systems, emphasizing the importance of data collection, storage, analysis, and visualization. It discusses two main methods of data entry: manual and automated, each with its advantages and disadvantages. Data visualization is highlighted as a crucial component, enabling users to interpret their health information clearly and understandably, using graphs and tables that facilitate the identification of trends and patterns. Additionally, the document addresses security and privacy challenges in data storage, both locally and in the cloud. Data analysis allows for generating personalized recommendations that help patients manage their condition more effectively. Overall, the document underscores the need for intuitive and accessible interfaces that enhance user experience and promote proactive diabetes management.
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