High-Value Use Cases – Moving Beyond the Limitations of Legacy Solutions

This five-part blog series from Jeffrey Eyestone, Chief Strategy and AI Officer at P-n-T Data Corp., explores why healthcare’s data sharing infrastructure is inadequate and how a new, agent-based model is helping providers, payers, and partners move beyond security and scalability limitations in order to improve key data-centric workflows like claims and prior authorization adjudication, AI and analytics, and more. Drawing on real-world insights from AI deployments and next-gen platform design, the series explores the link between healthcare data sharing challenges and improved data engineering.
In my previous post, we explored why agent-based systems outperform legacy solutions in speed, security, quality, and scalability. But the real proof is in the outcomes. When you eliminate the limitations of monolithic architecture and long-term data residency, and add data quality, transformation, and tracking agents, a new world of high-value use cases becomes possible.
Legacy platforms face limitations that prevent innovation:
- Monolithic architecture limits functionality to basic transaction processing
- Data quality issues and poor transformation capabilities create workflow friction
- Use cases requiring orchestration, intelligence, and auditability often fail
- AI, analytics, and business intelligence initiatives hit performance walls
- Healthcare organizations settle for mediocre results because they assume it’s the best available
- —and don’t forget data ownership issues
Post-n-Track Gen 3 – Enabling Intelligent Data Sharing Across X12 Transactions
Post-n-Track Gen 3 removes limitations, eliminating long-term data residency, enabling real-time processing, and powering modern use cases across the care and payment spectrum for claims, A&G, payment integrity, prior authorization, Analytics and AI:
Multi-source data integration enabling more accurate adjudication decisions
- No PHI/PII data storage exposure or ownership liability
- Automated exception handling and intelligent workflow routing
- Complex processing enhanced by out-of-process orchestration with rules-based decision support
- Better data quality and transformation, enabling a “shift-left” strategy (moving edits and business rules out to submitters, enforcing data quality at the point of submission) to drive efficiency and cost savings in more workflows
Additional High-Value Use Cases
- Revenue cycle automation with intelligent edits and exception resolution
- Payment integrity powered by fraud detection, duplication checks, and trend analysis
- Appeals and grievance management with full documentation and traceability
- Network performance optimization through real-time data scoring and visibility
- Population Health
Unlocking the Next Generation of Healthcare Data Sharing
All of these use cases are not theoretical. They’re fully enabled today by Post-n-Track Gen 3. It’s time to move past the limits of traditional solutions and embrace a platform designed for secure, intelligent, and scalable, healthcare data sharing.
Next, we’ll explore why so many healthcare AI initiatives fall short and how modern data engineering can unlock the value they promise.
Jeffrey Eyestone is Chief Strategy and AI Officer at P-n-T Data Corp.