
CLIENT LOVES
- Tailored AI experiences designed specifically for Patients, Practitioners, and Administrators.
- Automated symptom analysis and medical report parsing to streamline the intake process.
- Intelligent specialist suggestions and automated referral workflows.
- Comprehensive dashboards for tracking patient severity and practitioner performance.
HOW WE DELIVERED
- A supervisor-led architecture that intelligently routes queries to specialized agents.
- Hybrid infrastructure using AWS Lambda and specialized tools for secure data connectivity.
- Integration layers that bridge modern AI agents with legacy healthcare databases.
- Continuous trajectory testing to ensure all AI interactions remain clinically relevant and safe.
GAME-CHANGING FEATURES
- An orchestration layer that dynamically manages complex workflows across multiple personas.
- Extraction agents that transform unstructured uploads into actionable clinical data points instantly.
- A matching system that cross-references patient history with specialties for high-accuracy referrals.
- A built-in framework that monitors response appropriateness in real-time within regulated environments.
CLIENT VALUE ACHIEVED
- 24/7 intelligent responses for health inquiries and scheduling, boosting engagement.
- Significant reduction in burnout by automating summarization and referral handling.
- Instant prioritization of high-severity cases to improve operational throughput.
- A flexible, extensible framework that scales easily as new medical specialties are added.
Custom-Built for the Modern Healthcare Enterprise
Project Goal – A Multi-Persona Clinical AI Intelligence Layer
Healthcare systems struggle with fragmented communication and high administrative burdens that delay patient care. The goal was to build a sophisticated AI ecosystem where specialized agents act as “digital twins” for patients, doctors, and admins—automating the intake, referral, and reporting lifecycle without losing clinical context.
Overcoming the Challenge – The “Context-Awareness” Gap
Most AI solutions are generic and fail to understand the nuanced roles within a hospital. Our team bridged this gap by developing a Supervisor-Worker architecture. We built a “Patient Persona” for intake, a “Practitioner Persona” for treatment recommendations, and an “Admin Persona” for system-wide health summaries. By implementing a custom evaluation pipeline, we ensured that agents stayed within their role boundaries while maintaining high accuracy in medical data extraction.
Transformative Solution – The Future of Care Coordination
The resulting platform transforms how healthcare providers operate. By utilizing a “Patient Steward” for report summaries and a “Treatment Recommendation Agent” for clinical workflows, Bitcot has enabled a seamless flow of data. This ecosystem reduces manual data entry by over 40%, ensures 100% auditability via AWS X-Ray and centralized logging, and provides patients with a guided, compassionate journey from first symptom to specialist referral.
Tech Stack
Some technologies used for this project



