Integrating IoT Technologies for Effective Health Risk Assessment

Prof. Love Kumar

Abstract


This study examines the integration of IoT technologies for effective health risk assessment. By utilizing real-time data from wearable devices, we developed risk assessment models that identify high-risk individuals. The findings highlight IoT's role in preventive healthcare and the importance of early intervention.

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