• Skip to main content
  • Skip to secondary menu
  • Skip to primary sidebar
  • Skip to secondary sidebar
  • Skip to footer

  • Opinion
  • Health IT
    • Behavioral Health
    • Care Coordination
    • EMR/EHR
    • Interoperability
    • Patient Engagement
    • Population Health Management
    • Revenue Cycle Management
    • Social Determinants of Health
  • Digital Health
    • AI
    • Blockchain
    • Precision Medicine
    • Telehealth
    • Wearables
  • Life Sciences
  • Investments
  • M&A
  • Value-based Care
    • Accountable Care (ACOs)
    • Medicare Advantage

Reinventing Value-Based Care Program Administration with AI

by Leslie Vasquez, Federal Value-Based Care Lead at Accenture Federal Services 11/12/2025 Leave a Comment

  • LinkedIn
  • Twitter
  • Facebook
  • Email
  • Print
Reinventing Value-Based Care Program Administration with AI
Leslie Vasquez, Federal Value-Based Care Lead at Accenture Federal Services

Implementing a new VBC program in healthcare requires cross-functional support and overcoming numerous challenges. Simplification opportunities exist to address pain points for program administrators such as rigorous research, ROI assessment, and stakeholder engagement. Manual processes, including participant recruitment, financial modeling, program integrity management, and technical assistance can benefit from technology to streamline and automate tasks, allowing skilled resources to focus on higher-order activities.

Hurdles also exist for providers seeking to adopt VBC beyond a change in reimbursement cash flow. Successful adoption requires dedicated resources to educate and guide implementation of behavior change among staff and physicians. It also requires a considerable amount of data and analytic resources to make sense of that data. Some organizations, such as small, independent practices, lack the sophistication or capital to make it happen. Others that have the resources still find the investment hefty and the process burdensome. The American Society for Clinical Oncology (ASCO) reports that oncology practices struggle with government and private payer VBC models. Key challenges include understanding VBC terms, leveraging data for improvement, tracking care costs, data sharing and compliance, and lacking integrated technology. Practices see significant opportunities in interoperability, AI, and machine learning integration. Additionally, varying program requirements lead to provider fatigue and duplicate efforts. 

Use of Generative and Agentic AI has the potential to address challenges within VBC and improve efficiency of operational processes for clinical and non-clinical healthcare professionals.

Model Design & Implementation Powered by AI

Processes to design a new model can take months or years, influenced by existing infrastructure and the model’s financial and quality mechanics. Today, program staff can use AI-powered natural language processing and machine learning to efficiently conduct environmental scans and literature reviews to identify best practices and lessons learned. 

In addition, AI can enhance actuarial modeling by incorporating a wider range of data sources, including social determinants of health, to more accurately predict healthcare costs and utilization. This can support payers in designing and managing VBC programs. 

Incorporating risk adjustment in a program’s financial methodology is essential for program administrators in ensuring targets are accurate and achievable.  Getting the math right, however, can be incredibly burdensome and this is a cyclical task that requires ongoing updates. Use of Agents to group claims and stratify patients can accelerate these tasks.

For instance, commercially available Agents already exist to group claims into relevant categories, such as attributing them to providers participating in the alternative payment model and filtering out ineligible beneficiaries based on defined algorithms. Others exist that can segment patient populations based on risk profiles, disease states, and social determinants of health, allowing payers to tailor care management and reimbursement strategies. Similar approaches can help program staff deconflict overlap in claims and avert potential “double-dipping” among financial incentives.

AI-powered systems can automate financial reconciliation and report generation, allowing payers to efficiently manage the financial aspects of VBC programs. This automation reduces the time required for producing large-scale reports for large programs from weeks to just a few hours. Tools such as Databricks and Snowflake can support this by providing scalable data processing and storage capabilities to handle large volumes of provider data.

Agentic AI for Contracting and Provider Support

Agreements can be incredibly complex and the process of negotiating terms can take months or in worst case, years. Most sophisticated organizations use a rubric of terms to indicate what provisions are preferred, acceptable, discouraged, or unacceptable (PADU). Generative AI has the potential to analyze proposed terms against these rubrics and generate best-case scenarios and options for negotiators to reach win-win agreements with providers.

Most organizations underestimate the time and effort required for provider performance support. Complicating the matter is that there can be no “one size fits all” approach – providers vary widely in resourcing and level of sophistication with VBC. Integrating conversational Agents into provider dashboards can help meet providers where they are through tailored data-sharing and reporting and integrating interoperable data sources. Chatbots and virtual assistants powered by AI can provide 24/7 support to providers, answering questions about the APM, helping them access and interpret their performance data, and directing them to relevant learning resources. 

Conclusion

In conclusion, the adoption of VBC in healthcare presents significant challenges, from the need for extensive data analytics and risk adjustment to the integration of advanced technologies like AI. These challenges are particularly pronounced for smaller practices, but even larger organizations find the process burdensome. AI offers substantial opportunities to streamline and automate complex tasks such as actuarial modeling, patient stratification, and financial reconciliation, significantly reducing the time and effort required. By leveraging AI and other advanced technologies, healthcare providers and payers can more effectively manage VBC models, ultimately leading to improved care quality and cost management.


About Leslie Vasquez

Leslie Vasquez is a value-based care and performance improvement evangelist with 20 years of experience in healthcare. She has designed, launched, and led private and Federal programs to improve access, efficiency, and quality in a variety of care settings. Ms. Vasquez has worked in the payer, provider, and health IT sectors across her career. She presently serves as Federal Value-Based Care Lead at Accenture, a global consulting firm.

  • LinkedIn
  • Twitter
  • Facebook
  • Email
  • Print

Tagged With: Value-Based Care

Tap Native

Get in-depth healthcare technology analysis and commentary delivered straight to your email weekly

Reader Interactions

Primary Sidebar

Subscribe to HIT Consultant

Latest insightful articles delivered straight to your inbox weekly.

Submit a Tip or Pitch

Featured Interview

ConcertAI VP Shares View on AI Hallucinations and the Fabricated Data Crisis in Scientific Publishing

Most-Read

Cleveland Clinic and Khosla Ventures Form Strategic Alliance to Accelerate Healthcare Innovation

Cleveland Clinic and Khosla Ventures Form Strategic Alliance to Accelerate Healthcare Innovation

Northwell Health Selects to Deploy Abridge’s Ambient AI Across 28 Hospitals

Northwell Health to Deploy Abridge’s Ambient AI Across 28 Hospitals

Omada Health Launches "Nutritional Intelligence" with AI Agent OmadaSpark

Omada Health Launches AI-Powered Meal Map to Transform Nutrition for Cardiometabolic Patients

From Overwhelmed to Optimized: How AI Agents Address Staffing Challenges and Burnout in Healthcare

From Overwhelmed to Optimized: How AI Agents Address Staffing Challenges and Burnout in Healthcare

Qualtrics Acquires Press Ganey Forsta for $6.75B to Create the Most Comprehensive AI Experience Platform

Qualtrics Acquires Press Ganey Forsta for $6.75B to Create the Most Comprehensive AI Experience Platform

Pfizer and Trump Administration Announce Landmark Agreement to Lower Drug Costs

Pfizer and Trump Administration Announce Landmark Agreement to Lower Drug Costs

KLAS Report: Epic's Native Ambient Speech Tool Reshapes Customer AI Strategies

KLAS Report: Epic’s Native Ambient Speech Tool Reshapes Customer AI Strategies

Epic Unveils MyChart Central and New APIs to Advance Interoperability at Open@Epic

Epic Outlines Roadmap for Next-Generation Data Sharing at Open@Epic

Epic Launches Comet: A New AI Platform to Predict Patient Health Journeys

Epic Launches Comet: A New AI Platform to Predict Patient Health Journeys

RevSpring to Acquire Kyruus Health, Creating a Unified Patient Experience

RevSpring to Acquire Kyruus Health, Creating a Unified Patient Experience

Secondary Sidebar

Footer

Company

  • About Us
  • Advertise with Us
  • Reprints and Permissions
  • Op-Ed Submission Guidelines
  • Contact
  • Subscribe

Editorial Coverage

  • Opinion
  • Health IT
    • Care Coordination
    • EMR/EHR
    • Interoperability
    • Population Health Management
    • Revenue Cycle Management
  • Digital Health
    • Artificial Intelligence
    • Blockchain Tech
    • Precision Medicine
    • Telehealth
    • Wearables
  • Startups
  • Value-Based Care
    • Accountable Care
    • Medicare Advantage

Connect

Subscribe to HIT Consultant Media

Latest insightful articles delivered straight to your inbox weekly

Copyright © 2025. HIT Consultant Media. All Rights Reserved. Privacy Policy |