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AI Machine Learning (ML) in RCM

        Artificial Intelligence (AI) IN RCM   
     MEASURe | MONITOR | MONETIZE

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Our
Approach

 

WHO WE ARE:​

​P3 Quality™ is a Healthcare Tech company specializing in conducting AI In Revenue Cycle Management (RCM) research and designing AI AuditME™ Frameworks and Methods. 

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WHAT WE DO:

We extract and diagnose core Drift in AI Medical Coding Models.

  • Quality Specs + Compliance Checks

= Revenue Optimization Success

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OUR CORE VALUES | People, Processes & Principles

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​OUR CORE FOCUS | Auditing AI Frameworks

  • Revenue Integrity, HIM, CDI & RCM Consulting 

  • Auditing AI, Mitigation & Optimization 

  • ​DNFB Intelligence, Mitigation & Optimization 

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 OUR FIVE PILLARS FOR SUCCESS: 

  1. Accuracy (Integrity)

  2. Explainability (Understanding AI)

  3. Governance (HITL Oversight, Quality, Transparency)

  4. Equity (Bias, Fairness)

  5. ROI Alignment (Long-Term Sustainability) 

 

​​ â€‹â€‹â€‹â€‹â€‹â€‹â€‹â€‹We are nationally certified by the Women's   Business Enterprise National Council (WBENC). 

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Our
Methodology

OUR METHODS:

AI in RCM and Responsible AI AuditME™ Workflows:

 

Compliant, Accountable, Responsible, and Ethical Use of AI:

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NAIC-Aligned Standards:

  1. Governance 

  2. Transparency

  3. Accountability & Responsibility

  4. Data Quality, Privacy & Protections 

  5. Testing & Validation 

  6. Security & Risk Mitigation

  7. Third-Party BAA & Vendor Risks

  8. Consumer Protections

  9. Ongoing Audits, Monitoring & Maintenance​

 

MEDICAL RECORD VALIDATION

ELECTRONIC MEDICAL RECORDS

AI Misinterpretations & Misclassifications start with the  

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HEALTH DEMOGRAPHICS & DATA VALIDATION WORKFLOW â€‹

Patient Encounter or Hospital Admission

  • Inaccurate Demographic Data Collected

  • ​Cause AI in RCM Downstream Issues

    • Misalignment with Payer Expectations

 

QUALITY/COMPLIANCE AUDIT RISKS

  • Undercoding (Patient appears less sick)

  • Overcoding (Patient symptoms appear more complex) 

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ROOT CAUSE OF INCONSISTENCIES 

  1. Inaccurate Patient Data

  2. Wrong Diagnosis Codes

  3. Incorrect Procedure Codes

  4. Improper Modifiers 

  5. Missing Comorbidity Codes

  6. Incorrect Severity or Risk Scores

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MEASURING CHARGE ERRORS

 

AI CODING/CDI AUTOMATION

Inconsistent CDI Flags Cause Charge Errors

  • ​Upcoded E/M Levels​​​​

  • Incorrect Procedural Hierarchies 

  • Misassigned Chronic Conditions

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THESE MISTAKES CREATE

  • Quality/Compliance Exposure

  • Payer Clawback Risks

  • Potential Legal Implications for Providers

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ALL OF THIS STEMS FROM

  • The drift in how AI reads, interprets, and classifies Clinical Documentation.​

MONITORING AI ALGORITHM DRIFT​​

AI Algorithm Drift erodes trust between patients, providers, and AI in RCM Augmented Systems:

  • Coding Errors Increase

  • Providers Lose Confidence in Automated Coding

  • Patients Question Bills 

  • RCM Leaders Begin to Distrust Their AI Investment 

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MONETIZING KEY DRIFT INDICATORS  (KDIs): 

  • Accuracy Variance (AI model output vs. validated truth)

  • Coding/CDI Disagreement Rates

  • Claim Denial Spikes tied to AI-Generated logic

  • Charge Capture Changes > 10 YOY w/o Clinical Justification

  • DNFB Increase linked to AI Routing or Edits

  • ​Unexpected MUE, CCI, HCC, or DRG shifts

  • Payer Rule Incompatibilities Detected

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ON DEMAND                
SERVICE OFFERINGS
  • Eligibility Verifications 

  • Prior Authorizations

  • Clinical Documentation Integrity (CDI)

  • AI Medical Coding

  • AI Audits

  • Charge Integrity 

  • DNFB Reconciliation 

  • Denial Prevention

  • RCM Mitigation & Optimization

  • BAA & SLA Oversight 

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