Paper - Pytorch
Project description
Medical Diagnosis Swarm Architecture
MedicalSwarm is a sophisticated medical diagnosis and coding platform that leverages a coordinated swarm of specialized AI agents to deliver comprehensive medical assessments, accurate ICD-10 coding, and detailed clinical documentation. The system employs a hierarchical approach with specialized agents working in concert to analyze patient data, generate diagnoses, and ensure coding compliance.
Key Features
Multi-Agent Architecture
- Chief Medical Officer: Coordinates diagnosis workflow and synthesizes findings
- Virologist: Specializes in viral disease analysis and progression
- Internist: Provides comprehensive internal medicine evaluation
- Medical Coder: Ensures accurate ICD-10 coding and compliance
- Diagnostic Synthesizer: Creates final integrated assessments
Enterprise Integration
- RAG (Retrieval-Augmented Generation) API support
- Comprehensive logging and telemetry
- Scalable batch processing capabilities
- Configurable output formats and storage
Clinical Documentation
- Automated ICD-10 code assignment
- Hierarchical Condition Category (HCC) coding
- Evidence-based diagnostic rationale
- Detailed clinical progression timelines
Installation
pip install mcs
Onboarding
To get started you must first set some envs in your .env
WORKSPACE_DIR="agent_workspace"
OPENAI_API_KEY="your_key"
MASTER_KEY="328928402" # your master key for security
Usage
from mcs.main import MedicalCoderSwarm
import json
if __name__ == "__main__":
# Example patient case
patient_case = """
Patient: 45-year-old White Male
Location: New York, NY
Lab Results:
- egfr
- 59 ml / min / 1.73
- non african-american
"""
swarm = MedicalCoderSwarm(patient_id="Patient-001", max_loops=1, patient_documentation="")
swarm.run(task=patient_case)
print(json.dumps(swarm.to_dict()))
Example with HIPPA Grade Security
import json
from mcs.main import MedicalCoderSwarm
if __name__ == "__main__":
# Extended Example Patient Case
patient_case = """
Patient Information:
- Name: John Doe
- Age: 45
- Gender: Male
- Ethnicity: White
- Location: New York, NY
- BMI: 28.5 (Overweight)
- Occupation: Office Worker
Presenting Complaints:
- Persistent fatigue for 3 months
- Swelling in lower extremities
- Difficulty concentrating (brain fog)
- Increased frequency of urination
Medical History:
- Hypertension (diagnosed 5 years ago, poorly controlled)
- Type 2 Diabetes Mellitus (diagnosed 2 years ago, HbA1c: 8.2%)
- Family history of chronic kidney disease (mother)
Current Medications:
- Lisinopril 20 mg daily
- Metformin 1000 mg twice daily
- Atorvastatin 10 mg daily
Lab Results:
- eGFR: 59 ml/min/1.73m² (Non-African American)
- Serum Creatinine: 1.5 mg/dL
- BUN: 22 mg/dL
- Potassium: 4.8 mmol/L
- HbA1c: 8.2%
- Urinalysis: Microalbuminuria detected (300 mg/g creatinine)
Vital Signs:
- Blood Pressure: 145/90 mmHg
- Heart Rate: 78 bpm
- Respiratory Rate: 16 bpm
- Temperature: 98.6°F
- Oxygen Saturation: 98%
Differential Diagnoses to Explore:
1. Chronic Kidney Disease (CKD) Stage 3
2. Diabetic Nephropathy
3. Secondary Hypertension (due to CKD)
4. Fatigue related to poorly controlled diabetes
Specialist Consultations Needed:
- Nephrologist
- Endocrinologist
- Dietitian for diabetic and CKD management
Initial Management Recommendations:
- Optimize blood pressure control (<130/80 mmHg target for CKD)
- Glycemic control improvement (target HbA1c <7%)
- Lifestyle modifications: low-sodium, renal-friendly diet
- Referral to nephrologist for further evaluation
"""
# Initialize the MedicalCoderSwarm with the detailed patient case
swarm = MedicalCoderSwarm(
patient_id="Patient-001",
max_loops=1,
# patient_documentation=patient_case,
output_folder_path="reports",
key_storage_path="example_key.key",
)
# Run the swarm on the patient case
output = swarm.run(task=patient_case)
# Print the system's state after processing
print(json.dumps(swarm.to_dict(), indent=4))
Architecture Overview
flowchart TB
CMO[Chief Medical Officer] --> V[Virologist]
V --> I[Internist]
I --> MC[Medical Coder]
MC --> S[Synthesizer]
Features
- Specialized Agent Roles: Each agent has specific medical expertise and responsibilities
- Structured Diagnostic Flow: Organized pipeline from initial assessment to final synthesis
- ICD-10 Coding Integration: Comprehensive medical coding at each diagnostic stage
- Automated Report Generation: Standardized medical and coding reports
- Evidence-Based Decision Making: Multi-stage verification and synthesis process
Agent Responsibilities
mindmap
root((Medical Swarm))
Chief Medical Officer
Initial Assessment
Coordinate Specialists
Treatment Plans
Lab Range Analysis
Virologist
Viral Analysis
Disease Progression
Risk Assessment
Internist
System Review
Vitals Analysis
Comorbidity Evaluation
Medical Coder
ICD-10 Assignment
Coding Compliance
Documentation Review
Synthesizer
Integration
Reconciliation
Final Assessment
Diagnostic Flow Process
sequenceDiagram
participant P as Patient Case
participant CMO as Chief Medical Officer
participant V as Virologist
participant I as Internist
participant MC as Medical Coder
participant S as Synthesizer
P->>CMO: Initial Data
CMO->>V: Preliminary Assessment
V->>I: Viral Analysis
I->>MC: Comprehensive Review
MC->>S: Coded Diagnosis
S->>P: Final Report
API Usage
We have established an api in the /api folder. To run the api locally you must git clone, and then run:
cd api
chmod +x bootup.sh
./bootup.sh
API Testing
When you launch your api you can run the tests to see if it works ;)
cd api
python3 test.py
Docker Usage
To build and run the Docker container for the Medical Coder Swarm, follow these steps:
- Build the Docker Image:
docker build -t mcs .
- Run the Docker Container:
docker run --rm mcs
Lab Range Analysis
The system includes specialized functionality for analyzing lab results against diagnostic criteria:
- Automated range checking for common tests (e.g., eGFR)
- Diagnosis-specific range validation
- Multi-factor analysis for complex diagnoses
Contributing
- Fork the repository
- Create your feature branch (
git checkout -b feature/AmazingFeature) - Commit your changes (
git commit -m 'Add some AmazingFeature') - Push to the branch (
git push origin feature/AmazingFeature) - Open a Pull Request
License
This project is licensed under the MIT License - see the LICENSE.md file for details
Acknowledgments
- Built with the Swarms framework
- ICD-10 coding standards compliance
Contact
For questions and support, please open an issue in the repository.
Project details
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