Smart Healthcare Monitoring System: Integrating IoT, Deep Learning, and XGBoost for Real-time Patient Diagnosis.

Kruthika Paulraj,Nisha Soms,S. David Samuel Azariya, Sathya Priya S,Jeba Emilyn J, Vidhushavarshini Sureshkumar

OITS International Conference on Information Technology(2023)

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Abstract
Integrating the Internet of Things (IoT), Deep Learning (DL), and the XGBoost algorithm has paved the way for transformative advancements in healthcare. This paper presents a pioneering study on a "Smart Healthcare Monitoring System" that harnesses the synergy of these technologies for real-time patient diagnosis. With the escalating demand for accurate and swift medical assessments, our work addresses the crucial need for timely and precise diagnosis. The proposed system amalgamates IoT-enabled wearable devices and sensors to capture comprehensive patient data. A hybrid approach is employed to leverage this data, comprising a Deep Learning model for intricate pattern recognition and the XGBoost algorithm for rapid decision-making. Nonetheless, challenges such as data security and model interpretability are acknowledged, highlighting avenues for future research. This paper underscores the transformative potential of the IoT-Deep Learning-XGBoost integration, offering a robust foundation for further innovation in intelligent healthcare systems. As healthcare delivery evolves, our work underscores the promise of this interdisciplinary fusion in revolutionizing patient diagnosis and care.
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Key words
Smart Healthcare Monitoring System,IoT,Deep Learning,XGBoost,Real-time Patient Diagnosis,Wearable Devices,Medical Sensors,Accuracy,Precision,Healthcare Practices,Data Privacy,Model Interpretability,and Clinical Decision-making
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