Our
Approach
WHO WE ARE:​
​P3 Quality™ is a Healthcare Tech 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.
​
P3 Core Values | People, Processes & Principles
​
WHAT WE DO:​
P3 Core Focus | AI in RCM Audits
-
RCM Consulting (Revenue Integrity, CDI & HIM)
-
AI Audits, Mitigation & Optimization
-
​DNFB Intelligence, Mitigation & Optimization
​
​​The P3 Quality™ Quotient = Quality First | Quality Forward ​​​​​
​​​​We are proud to be certified nationally by the Women's Business Enterprise National Council (WBENC).
​
Our
Methodology
METHODS:
AI in RCM and Responsible AI AuditME™ Frameworks:
Compliant, Accountable, Responsible, and Ethical Use of AI:
​​​​
NAIC-Aligned Standards:
-
Governance
-
Transparency
-
Accountability & Responsibility
-
Data Quality, Privacy & Protections
-
Testing & Validation
-
Security & Risk Mitigation
-
Third-Party BAA & Vendor Risks
-
Consumer Protections
-
Ongoing Audits, Monitoring & Maintenance​
MEDICAL RECORD VALIDATION
PAPER MEDICAL RECORDS
Eligible, Compliant & Safe Discard
​​
ORGANIZATIONAL RETENTION
Destruction Validation
-
Record Identification & Eligibility
-
Retention Schedule Validation
-
Completeness & Conversion Validation
-
Quality Assurance Before Destruction
-
Privacy, Security & Compliance Checks
-
Inventory & Tracking Standards Review
​​
ELECTRONIC MEDICAL RECORDS
Claims Data Validation ​
Ensure All Data Element Are Accurate
-
Patient Identity & Demographics
-
Admission, Encounter & Visit Information
-
CDI Documentation Elements
-
Diagnosis?
-
(e.g., ICD-10 Codes)
-
Medically Necessity Alerts?
(payer LCD/NCD policies)
-
H&P, CPT Codes, Charge Notes, etc.​
​
​
​​
​
CHARGE CORRECTION
AI CODING/CDI AUTOMATION RULES
Charge Errors
When CDI Automation Flags a Charge Issue that requires Correction, is the root cause of the inconsistency analyzed? Was it an AI or a human error?
​​​​​
When Routed to the CDI/Coding Teams
-
Are AI documentation/coding inconsistencies reviewed, verified, validated, and discussed with the vendor? ​
AI AUTOMATION DRIFT​​
​
AI Model's Accuracy
AI Algorithm Drift occurs when an AI Model's accuracy or decision quality decreases over time. Real-world data, patterns, or rules evolve, causing the model to become misaligned with current clinical data, coding, and billing standards. Who is measuring and monitoring this?
​
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
​​
​
​​



