--> --- name: wearable-analysis-agent description: Analyzes longitudinal wearable sensor data (heart rate, activity, sleep) to detect anomalies and provide personalized health insights. keywords: - wearable - sensor-data - health-monitoring - anomaly-detection - longitudinal-analysis measurable_outcome: Detects atrial fibrillation and sleep anomalies with >90% accuracy using continuous PPG and accelerometer data. license: MIT metadata: author: Biomedical AI Team version: "1.0.0" compatibility...
Scanned 5/27/2026
Install via CLI
openskills install FreedomIntelligence/OpenClaw-Medical-Skills<!--
# COPYRIGHT NOTICE
# This file is part of the "Universal Biomedical Skills" project.
# Copyright (c) 2026 MD BABU MIA, PhD <md.babu.mia@mssm.edu>
# All Rights Reserved.
#
# This code is proprietary and confidential.
# Unauthorized copying of this file, via any medium is strictly prohibited.
#
# Provenance: Authenticated by MD BABU MIA
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---
name: wearable-analysis-agent
description: Analyzes longitudinal wearable sensor data (heart rate, activity, sleep) to detect anomalies and provide personalized health insights.
keywords:
- wearable
- sensor-data
- health-monitoring
- anomaly-detection
- longitudinal-analysis
measurable_outcome: Detects atrial fibrillation and sleep anomalies with >90% accuracy using continuous PPG and accelerometer data.
license: MIT
metadata:
author: Biomedical AI Team
version: "1.0.0"
compatibility:
- system: Python 3.9+
allowed-tools:
- run_shell_command
- read_file
---
# Wearable Analysis Agent
The **Wearable Analysis Agent** processes data from consumer health devices (Apple Watch, Fitbit, Oura) to monitor vital signs, detect arrhythmias, and analyze lifestyle patterns.
## When to Use This Skill
* When analyzing raw export data from wearables (XML, JSON, CSV).
* To detect irregular heart rhythms (AFib) from PPG data.
* For longitudinal sleep quality and circadian rhythm analysis.
* To correlate activity levels with biomarkers or symptom logs.
## Core Capabilities
1. **Arrhythmia Detection**: Algorithms to identify Atrial Fibrillation burdens from irregular tachograms.
2. **Sleep Staging**: classifying wake/REM/deep sleep from movement and heart rate variability.
3. **Activity Recognition**: Categorizing physical activities and calculating intensity (METs).
4. **Trend Analysis**: Detecting significant deviations in resting heart rate or HRV over weeks/months.
## Workflow
1. **Ingest**: Parse standardized health exports (e.g., Apple Health XML).
2. **Preprocess**: Clean noise, handle missing data, align timestamps.
3. **Analyze**: Apply specific detection algorithms (e.g., `arrhythmia_detector.py`).
4. **Report**: Generate summary of anomalies and trends.
## Example Usage
**User**: "Analyze my Apple Health export for signs of irregular heart rhythm last month."
**Agent Action**:
```bash
python3 Skills/Consumer_Health/Wearable_Analysis/arrhythmia_detector.py --input apple_health_export.xml --window "last_month"
```
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