PulseSync: IoT-Enabled Monitoring and Predictive Analytics for Healthcare
Abstract
PulseSync, an advanced IoT-driven
healthcare system, employs wearable sensors to monitor
vital signs like heart rate, blood pressure, and oxygen
saturation in real-time. Its cloud-based storage ensures
secure data accessibility for clinicians. Notably,
PulseSync integrates machine learning to predict
diabetes risk, facilitating timely interventions. Clinicians
benefit from a user-friendly interface on the PulseSync
website, offering immediate alerts for abnormal vital
signs and enabling trend analysis. The website of
PulseSync also provides real-time vitals of patients,
while the dedicated mobile app empowers individuals
and caregivers with direct access to vital data, fostering
a proactive approach to health management. The app
offers real-time vitals of the particular patient, aiding in
continuous monitoring. The system’s predictive
analytics for diabetes is grounded in advanced data
analytics and algorithmic modeling, enabling clinicians
to develop personalized and preemptive strategies.
PulseSync’s real-time data access and predictive
capabilities are poised to redefine healthcare delivery,
enabling early intervention and personalized preventive
measures. This transformative healthcare experience
extends to patients, making them active partners in
their well-being journey. PulseSync encapsulates the
evolving landscape of patient-centric, data-driven
healthcare solutions.
Keywords:
IOT, AIPublished
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