What Is Medicare Risk Adjustment?
Medicare Risk Adjustment is a payment methodology designed by the Centers for Medicare & Medicaid Services (CMS) to ensure fair compensation for healthcare plans and providers who care for patients with varying levels of health risk.
In simple terms, it means: the sicker or more complex a patient’s condition is, the higher the reimbursement CMS provides to the plan or provider managing their care.
The Purpose and Foundation of Risk Adjustment
Traditional Medicare payments once used a “one-size-fits-all” approach, where every beneficiary was funded equally, regardless of their health status. This often led to underfunding care for high-risk patients and overpayment for healthy populations.
Risk adjustment was created to solve this imbalance – by predicting future healthcare costs based on a patient’s diagnoses, age, gender, and other factors.
How CMS Uses Risk Adjustment in Medicare Advantage
Medicare Advantage (MA) plans receive a per-member-per-month (PMPM) payment from CMS. The amount is “adjusted” based on the health risk score of each beneficiary. This ensures that plans caring for high-risk patients (e.g., those with chronic illnesses) receive adequate funding to provide comprehensive care.
Key Goals: Fairness, Accuracy, and Predictive Care Costs
Risk adjustment aims to:
- Promote fair compensation for plans managing sicker patients.
- Encourage accurate documentation and coding.
- Improve predictive modeling for population health management.
- Support value-based care, where payment aligns with patient outcomes rather than volume of services.
Why Risk Adjustment Matters for Providers
Financial Implications and Value-Based Reimbursement
Accurate risk adjustment coding directly affects reimbursement. For providers in Medicare Advantage or ACO models, each documented diagnosis contributes to the patient’s risk score. If a chronic condition is missed or not recaptured annually, reimbursement for that patient’s care may be significantly lower.
Inaccurate documentation = lost revenue.
Impact on Patient Care and Quality Outcomes
When risk scores reflect true patient complexity, providers can allocate resources more effectively – for example, assigning care managers to high-risk diabetics or scheduling follow-ups for COPD patients.
Better data drives better care coordination, preventive interventions, and improved outcomes.
How Accurate Coding Drives Fair Compensation
Every diagnosis must be supported by clear, specific documentation. A missed or incorrectly coded diagnosis doesn’t just affect payment; it skews population health data and risk profiles.
This is why risk adjustment coding is now seen as a clinical responsibility, not just a billing task.
How the CMS Risk Adjustment Model Works
1. Understanding Hierarchical Condition Categories (HCC)
The CMS risk adjustment system relies on Hierarchical Condition Categories (HCCs) – a model that groups related diagnoses into categories that reflect similar clinical severity and cost impact.
For example, diabetes without complications maps to a lower-weight HCC than diabetes with chronic complications.
Each patient’s HCCs are identified annually from their documented diagnoses.
2. The Risk Adjustment Factor (RAF) Scoring Explained
Each beneficiary receives a Risk Adjustment Factor (RAF) score that represents their predicted cost relative to an average Medicare beneficiary.
- A RAF score of 1.0 indicates average risk.
- Scores above 1.0 indicate higher expected costs due to comorbidities or age.
- CMS combines these scores with demographic data to calculate payments.
3. Data Sources: Demographic, Clinical, and Encounter Data
CMS uses:
- Demographic data (age, gender, Medicaid eligibility)
- Clinical data (diagnoses from claims and encounter reports)
- Prescription Drug Event (PDE) data for Medicare Part D
Example: How Risk Scores Affect Reimbursement
If a patient with diabetes and heart failure has both conditions documented, their plan might receive 1.35× the standard payment.
If one diagnosis is missing, payment could drop to 1.05×, potentially reducing funding by hundreds of dollars per month.
Medicare Advantage and Risk Adjustment
1. How Medicare Advantage Plans Use Risk Scores
Medicare Advantage plans depend heavily on risk scores to forecast patient costs and manage population health. The higher the aggregate RAF score, the greater the expected medical expenses — and the higher the CMS reimbursement to support that care.
2. Key Differences from Traditional Medicare Payments
Unlike Fee-for-Service (FFS) Medicare, which pays per service rendered, Medicare Advantage (MA) operates on a capitated model – a fixed payment per beneficiary.
Risk adjustment ensures these capitated payments remain actuarially sound and reflect the real-world health status of members.
3. How CMS-HCC Models Evolve Annually
CMS continually updates the HCC model (e.g., Version 28 for 2025) to account for medical advances, coding trends, and policy priorities.
Each version adjusts how certain conditions are grouped and weighted – impacting reimbursement logic and clinical documentation requirements.
The Role of Providers in Risk Adjustment Accuracy
1. Accurate and Complete Documentation
Providers are the front line of risk adjustment. Every diagnosis entered into the EHR must:
- Be evaluated during a face-to-face visit.
- Be supported by clinical evidence.
- Clearly describe the patient’s condition and its impact on care.
2. Importance of Annual Wellness Visits and Condition Recapture
CMS requires that chronic conditions be recaptured annually to remain active in risk adjustment calculations.
Annual wellness visits and routine follow-ups are essential for maintaining accurate HCC mappings.
3. Common Documentation and Coding Errors to Avoid
- Listing historical or resolved conditions as active
- Failing to specify disease severity or type
- Using unspecified ICD-10 codes when specificity is available
- Missing linkage between conditions (e.g., “diabetes with neuropathy”)
2025 CMS Risk Adjustment Model Updates
1. Transition from V24 to V28 – What Changed?
CMS finalized the transition from Model V24 to V28, introducing:
- More clinically precise groupings
- Fewer HCCs (from 86 to 115 consolidated categories)
- Updated condition hierarchies that better reflect disease burden
2. New Condition Mappings and RAF Score Recalibrations
Certain chronic conditions, like obesity and substance use disorder, now carry more weight, while others (like simple hypertension) have less financial impact.
3. Key Takeaways for Clinicians and Coding Teams
- Reassess all chronic condition lists for proper specificity.
- Focus on hierarchical relationships — higher severity trumps lower ones.
- Regularly train staff on CMS V28 coding changes.
Data Capture, EHR, and Technology in Risk Adjustment
1. How EHR Integration Improves Coding Precision
Integrated EHR systems can flag missing or uncaptured chronic conditions, reducing human error and optimizing documentation workflows.
Automation ensures real-time HCC validation and fewer missed codes.
2. Role of AI and NLP in Identifying Unrecorded Diagnoses
Modern risk adjustment technology uses Natural Language Processing (NLP) and AI models to scan clinical notes and identify undocumented or under-coded diagnoses.
This can increase RAF accuracy and support compliance.
3. Leveraging Analytics to Close Documentation Gaps
Providers can use dashboards to:
- Track documentation completeness
- Benchmark RAF performance
- Identify outliers or missed opportunities in coding
Compliance and Audit Readiness
1. CMS Audits and Data Validation Processes
CMS conducts Risk Adjustment Data Validation (RADV) audits to verify the accuracy of submitted HCCs.
Each documented condition must be supported by a medical record from a face-to-face encounter.
2. Documentation Best Practices for Audit Defense
- Maintain clear progress notes linking diagnosis to treatment.
- Ensure provider signatures and dates are complete.
- Store supporting test results or specialist notes for high-risk diagnoses.
3. Ethical Coding and Compliance Considerations
Upcoding (intentionally inflating diagnosis severity) can result in fines or clawbacks.
Providers should always prioritize accuracy and integrity over financial gain.
Best Practices to Improve Risk Adjustment Performance
1. Provider Education and Training
Ongoing education helps physicians understand how documentation affects reimbursement.
Quarterly workshops or CDI (Clinical Documentation Improvement) sessions ensure teams stay current with CMS model updates.
2. Implementing Clinical Documentation Improvement (CDI) Programs
CDI programs align clinical workflows with coding requirements, ensuring the right diagnoses are captured every time.
3. Collaboration Between Payers and Providers
When payers and providers share insights, risk adjustment outcomes improve.
Joint audits, shared dashboards, and feedback loops promote mutual accountability and better patient representation.
Future of Medicare Risk Adjustment
1. AI-Driven Models and Predictive Analytics
The next generation of risk adjustment will use machine learning to forecast risk dynamically, leveraging social determinants of health (SDOH) and real-time data.
2. Shift Toward Outcome-Based Risk Modeling
Future models may tie reimbursement not only to risk but also to actual patient outcomes and preventive performance metrics.
3. What Providers Should Prepare for Beyond 2025
- Greater interoperability between EHRs and CMS systems.
- Advanced AI-assisted clinical documentation tools.
- Heightened focus on ethical and transparent coding practices.
Key Takeaways for Providers
- Document every active chronic condition annually.
- Verify HCC and RAF accuracy before submission.
- Use AI and EHR analytics to uncover missed diagnoses.
- Keep staff trained and compliant with CMS model updates.
- Maintain complete audit-ready documentation.
Conclusion
Medicare Risk Adjustment is not just a billing mechanism – it’s a core pillar of equitable healthcare financing. By mastering documentation accuracy, embracing technology, and focusing on patient outcomes, providers can ensure they are fairly compensated while delivering high-quality, coordinated care.
In 2025 and beyond, the providers who invest in data accuracy and continuous education will lead the charge toward a more predictive, value-based healthcare future.
FAQ’s
1. What is Medicare Risk Adjustment?
Medicare Risk Adjustment is a payment system used by the Centers for Medicare & Medicaid Services (CMS) to make sure health plans and providers are fairly reimbursed for the care they deliver.
It adjusts payments based on each patient’s health status, age, and demographics, ensuring that providers who care for sicker or more complex patients receive appropriate compensation.
2. How does the CMS Risk Adjustment model work?
CMS uses the Hierarchical Condition Categories (HCC) model to assign a Risk Adjustment Factor (RAF) score to each beneficiary.
This score is calculated using documented diagnoses, age, gender, and dual-eligibility status. Higher scores represent higher expected healthcare costs and lead to higher reimbursements for the provider or health plan.
3. Why is Medicare Risk Adjustment important for providers?
For providers, accurate risk adjustment ensures fair payment and supports value-based care initiatives.
It also helps healthcare organizations manage population health, identify high-risk patients, and allocate care resources efficiently.
Inaccurate or incomplete documentation can lead to revenue loss and compliance risks
4. What is an HCC code in Medicare Risk Adjustment?
An HCC (Hierarchical Condition Category) is a grouping of medical diagnoses that reflect similar clinical severity and cost impact.
Each diagnosis is mapped to one HCC, which contributes to a patient’s overall risk score. For example, diabetes with complications maps to a higher-weight HCC than diabetes without complications.
5. What is a RAF score in Medicare?
The Risk Adjustment Factor (RAF) score quantifies a patient’s predicted healthcare costs compared to the average Medicare beneficiary.
RAF = 1.0 → Average expected cost
RAF > 1.0 → Higher expected cost (more complex patient)
RAF < 1.0 → Lower expected cost (healthier patient)
6. How often do risk scores need to be updated?
Risk scores are recalculated annually by CMS.
Providers must recapture all active chronic conditions each calendar year during face-to-face encounters for them to count toward the next year’s risk score.
7. What are common documentation errors in risk adjustment?
Some of the most frequent errors include:
Missing chronic condition documentation
Using unspecified ICD-10 codes
Failing to link related conditions (e.g., “CKD due to diabetes”)
Listing historical conditions as active
Avoiding these errors helps maintain compliance and accurate reimbursement.
8. What changed in the 2025 CMS Risk Adjustment Model (V28)?
The 2025 model (Version 28) includes:
Updated condition hierarchies and weights
Greater focus on clinical precision and chronic disease burden
Reduced redundancy in condition categories (from 86 to 115 refined HCCs)
Providers must ensure coding and documentation align with V28 updates to avoid payment discrepancies.
9. How can technology help improve risk adjustment accuracy?
Modern EHRs, AI-powered tools, and Natural Language Processing (NLP) can automatically identify uncoded or under-documented conditions.
Analytics dashboards also help monitor RAF trends, detect coding gaps, and support audit readiness — making risk adjustment more accurate and efficient.

