Published February 28, 2026
| Version v1
Journal article
Open
Personalized Healthcare Recommendation System Using Wearable Sensor Data Analytics
Description
Abstract
Modern health technologies have shifted from reactive care to proactive prevention by utilizing personal sensors that continuously monitor vital signs like pulse, heat, and oxygen levels. By treating these data streams as evolving trajectories rather than isolated data points, memory-based algorithms can filter out environmental noise and identify subtle irregularities—such as heart rhythm shifts—long before physical symptoms emerge. These systems achieve high precision by learning an individual’s unique biological rhythms over time and integrating live data with historical medical records to form a comprehensive health profile. To ensure safety and trust, the process relies on strict privacy measures like decentralized training and full encryption, which protect personal information while allowing the AI to refine its accuracy. Ultimately, this intelligent extraction of meaning from daily activity bridges the gap between everyday routines and clinical care, empowering users with clearer insights and strengthening global health systems through earlier, more accurate interventions.
Keywords
Wearable Sensors, Continuous Health Monitoring, Data Pre-processing, Time-Series Analysis, Predictive Health Analytics, Public Health Recommendation System.
Files
Personalized-Healthcare-Recommendation-System-Using-Wearable-Sensor-Data-Analytics.pdf
Files
(445.9 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:821cce378683dd80d3885ec3b5e377bc
|
445.9 kB | Preview Download |