The system collects real-time wearable health data, normalizes it, and uses AI to analyze trends and risk scores. It detects anomalies by comparing with historical patterns and automatically triggers alerts and follow-up actions when thresholds are exceeded.
Webhook → Store Database → Normalize Data → Calculate Health Score → Analyze Metrics → Compare Previous → Check Threshold → Generate Reports/Alerts → Email/Slack → Schedule Follow-up
Ingest real-time wearable data via webhook, store and standardize it, and use GPT-4 for trend analysis and risk scoring. Monitor metrics against thresholds, trigger SMS, email, or Slack alerts, generate reports, and schedule follow-ups.
Configure webhook, database, GPT-4 API, notifications, calendar integration, and customize alert thresholds.
Wearable API, patient database, GPT-4 key, email SMTP, optional Slack/Twilio, calendar integration.
Monitor glucose for diabetics, track elderly vitals/fall risk, assess corporate wellness, and post-surgery recovery alerts.
Adjust risk algorithms, add metrics, integrate telemedicine.
Early intervention reduces readmissions and automates 80% of monitoring tasks.