IOT BASED SMART HEALTHCARE MONITORING SYSTEM USING ECG WEARABLE DEVICES | IJCT Volume 13 – Issue 2 | IJCT-V13I2P19

International Journal of Computer Techniques
ISSN 2394-2231
Volume 13, Issue 2  |  Published: March – April 2026

Author

SHAMSUDDEEN MOHAMMED MAMMAN

Abstract

This paper presents an overview of an IoT-based healthcare monitoring system that utilizes ECG wearable devices for elderly patients. The system enables continuous monitoring of heart health by capturing ECG data through a wearable device, which is transmitted to a remote healthcare provider for analysis. This real-time data provides insights into a patient’s health status, allowing for timely interventions and enhancing the quality of care. The feasibility, advantages, and potential challenges associated with implementing an IoT-based healthcare monitoring system that utilizes wearable ECG devices for the elderly are explored. The results suggest that an IoT-based healthcare monitoring system using ECG wearable devices is a promising solution for addressing the needs of elderly patients who require continuous health monitoring.

Keywords

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Conclusion

In conclusion, the study demonstrates the potential of the IoT-based smart healthcare monitoring system using an ECG wearable device to revolutionize elderly care and improve healthcare outcomes. By harnessing the power of IoT technology and wearable devices, healthcare professionals can provide personalized care, detect and manage arrhythmias effectively, and empower the elderly to maintain their well-being. This research lays the foundation for future advancements in healthcare technologies for the elderly population, fostering collaboration and innovation in this critical area of healthcare.

References

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How to Cite This Paper

SHAMSUDDEEN MOHAMMED MAMMAN (2026). IOT BASED SMART HEALTHCARE MOTIRORING SYSTEM USING ECG WEARABLE DEVICES. International Journal of Computer Techniques, 13(2). ISSN: 2394-2231.

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