Enhancing Healthcare Services through User-Centered Data Collection and Analysis


Zungor O., Uludag Y., Celikel O., PINARER Ö.

2024 IEEE International Conference on Big Data, BigData 2024, Washington, United States Of America, 15 - 18 December 2024, pp.6556-6563, (Full Text) identifier

  • Publication Type: Conference Paper / Full Text
  • Doi Number: 10.1109/bigdata62323.2024.10825709
  • City: Washington
  • Country: United States Of America
  • Page Numbers: pp.6556-6563
  • Keywords: Big Data Analytics in Healthcare, Internet of Medical Things (IoMT), Patient Engagement and Data Privacy, Predictive Health Analytics, User-Centered Design
  • Galatasaray University Affiliated: Yes

Abstract

The advent of real-time data processing applications has revolutionized monitoring and analysis capabilities across diverse operational domains, including big data and healthcare. This study focuses on the development and evaluation of a prototype application designed for real-time data processing in dynamic environments. The application parses configuration files, processes real-time sensor data and outputs calculated values at user-defined intervals, ensuring accuracy and timeliness in data analysis. Experimental evaluations under varied conditions validate the application's robust performance in managing pipeline operations, computational efficiency, response times and data aggregation precision. Optimizations, including data type adjustments, significantly enhance network communication efficiency and reduce latency, critical for supporting real-time applications. The application's flexibility in user-configured settings for data storage and aggregation proves essential for adapting to specific application requirements. This adaptability is particularly beneficial f or handling the complexities of big data and the sensitivity of healthcare data. Overall, this study contributes a robust solution for real-time data processing and continuous monitoring, demonstrating its feasibility and applicability across dynamic operational environments, including those requiring rigorous data handling and precise analytics.