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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 HealthTech company specializing in designing AI AuditME Methods. We work with healthcare leaders and organizations to develop AI-driven revenue cycle management (RCM) Mitigation and Optimization (MO) Frameworks, as well as provide Consulting Services.    

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P3 Core Values | People, Processes & Principles

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WHAT WE DO:​

P3 Core Focus | AI in RCM Audits

  • RCM Consulting (Revenue Integrity, CDI & HIM)

  • AI Audits, Mitigation & Optimization 

  • ​DNFB Automation, Mitigation & Optimization 

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P3 Quality™ Five Pillars: 

  1. Accuracy (Integrity)

  2. Explainability (Understanding AI)

  3. Governance (HITL Oversight, Quality, Transparency)

  4. Equity (Bias, Fairness)

  5. ROI Alignment (Long-Term Sustainability) 

 

​​The P3 Quality Quotient = Quality First | Quality Forward  â€‹â€‹â€‹â€‹â€‹

 

​​​​We are proud to be certified nationally by the Women's Business Enterprise National Council (WBENC).  

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Our
Methodology

METHODS:

AI in RCM and Responsible AI AuditME™ Frameworks:

 

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​

 

CDI & CODING AUTOMATION

AI ENHANCEMENTS & WORKFLOWS

AI/ML-CDI Assistant Performance

CDI Automation Auto-Suggests

  • Are the Alternate ICD-10 codes for greater specificity selected by AI accurate?

  • Why are CPT Codes for documented procedures missing when automated, but showing up as billed?  

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Ethical Use of AI/ML â€‹

Are the AI Automatic Flags working properly?

  • For Diagnosis?

(e.g., ICD-10 Codes)

  • Medically Necessity Alerts?

(payer LCD/NCD policies) 

  • Clinical Documentation?

(H&P, CPT Codes, Charge Notes, etc.)​

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CHARGE CORRECTION

 

AI AUTOMATION RULES

Charge Errors 

When CDI Automation Flags an Issue that requires Correction, is the root cause of the inconsistency reviewed? Was it an AI or a human error?

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When Routed to the CDI/Coding Team 

  • Are AI documentation/coding inconsistencies verified, validated, and discussed with the vendor? ​

AI ​QUALITY CONTROL​​

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HOW IS PERFORMANCE MEASURED?

Algorithms, Data Integrity & KPIs

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WHO IS MONITORING?

AI Dashboards:

  • How well is AI performing? 

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Quality Checks:

  • What are the AI performance metrics? 

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Algorithm Integrity Checks:

  • Who is tracking and trending the output? (e.g., algorithmic performance, AI Data errors, AI  inconsistencies, and other various types of findings).

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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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