Journal of Machine and Computing


Development and Implementation of an Intelligent Health Monitoring System using IoT and Advanced Machine Learning Techniques



Journal of Machine and Computing

Received On : 02 March 2023

Revised On : 21 June 2023

Accepted On : 20 July 2023

Published On : 05 October 2023

Volume 03, Issue 04

Pages : 456-464


Abstract


Healthcare practices have a tremendous amount of potential to change as a result of the convergence of IoT technologies with cutting-edge machine learning. This study offers an IoT-connected sensor-based Intelligent Health Monitoring System for real-time patient health assessment. Our system offers continuous health monitoring and early anomaly identification by integrating temperature, blood pressure, and ECG sensors. The Support Vector Machine (SVM) model proves to be a reliable predictor after thorough analysis, obtaining astounding accuracy rates of 94% for specificity, 95% for the F1 score, 92% for recall, and 94% for total accuracy. These outcomes demonstrate how well our system performs when it comes to providing precise and timely health predictions. Healthcare facilities can easily integrate our Intelligent Health Monitoring System as part of the practical application of our research. Real-time sensor data can be used by doctors to proactively spot health issues and provide prompt interventions, improving the quality of patient care. This study's integration of advanced machine learning and IoT underlines the strategy's disruptive potential for transforming healthcare procedures. This study provides the foundation for a more effective, responsive, and patient-centered healthcare ecosystem by employing the potential of connected devices and predictive analytics.


Keywords


IoT, Health Monitoring, Machine Learning, Anomaly Detection, Support Vector Machine, Patient Care, Healthcare Technology.


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Acknowledgements


Authors thanks to Department of Computer Science and Engineering for this research support.


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Cite this article


Pabitha C, Kalpana V, Evangelin Sonia SV, Pushpalatha A, Mahendran G and Sivarajan S, “Development and Implementation of an Intelligent Health Monitoring System using IoT and Advanced Machine Learning Techniques”, Journal of Machine and Computing, vol.3, no.4, pp. 456-464, October 2023. doi: 10.53759/7669/jmc202303037.


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© 2023 Pabitha C, Kalpana V, Evangelin Sonia SV, Pushpalatha A, Mahendran G and Sivarajan S. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.