CMO Co-Pilot: GenAI Multi-Agent Automation in Healthcare

CMO Co-Pilot case study

Customer

An independent U.S. healthcare services provider specializing in long-term medical plan management. The organization supports the full patient journey across multiple health stages and is led operationally by a Chief Medical Officer (CMO). Their strategic goal is to modernize care coordination and clinical decision-making through GenAI-powered multi-agent automation.

Business Objective

The client aimed to:

  • Improve efficiency across the full patient healthcare lifecycle

  • Reduce manual work during onboarding, plan creation, and plan management

  • Build a CMO Co-Pilot to support clinical decision-making

  • Enable GenAI-driven workflows for scheduling, communication, and notes

  • Enhance patient experience in long-term care environments

  • Create a scalable multi-agent framework that could evolve into a full clinical co-pilot

The goal was to establish a GenAI foundation for operational and strategic medical support.

Scope of Services

BXI Technologies partnered with the client to:

  • Design and implement a multi-agent GenAI framework

  • Create domain-specialized agents, trained using RAG on EHR and patient history data

  • Automate end-to-end workflows across:

    • Patient onboarding

    • Plan mapping and validation

    • Appointment scheduling

    • Communication workflows

    • Notes generation

  • Integrate GenAI agents with existing healthcare systems

  • Build a scalable architecture to support the future CMO Co-Pilot vision

The result is a working GenAI automation layer that streamlines patient operations and supports clinical decision cycles.

Benefits

  • Significantly faster patient onboarding and process turnaround

  • Higher accuracy in patient plan creation and management

  • More efficient appointment scheduling and operational coordination

  • Improved productivity and support for the CMO through GenAI co-pilot functions

  • Better utilization of clinical experts across the patient lifecycle

  • A strong foundation to scale into a full CMO decision-support platform

Impact

  • 99% faster patient onboarding

  • 30% more efficient appointment scheduling and plan management

  • Significant improvement in overall system efficiency and CMO utilization