Article contents
AI-Powered Physician-Insurance Data Mapping: A Case Study in Reducing Revenue Leakage
Abstract
The AI-powered physician-insurance data mapping platform represents a transformative solution for healthcare revenue cycle challenges, specifically addressing the persistent problem of network-related claim denials. By combining natural language processing for insurance contract interpretation, FHIR-compliant integration with electronic health records, and machine learning for discrepancy resolution, the platform creates a comprehensive verification ecosystem that validates physician participation in insurance networks with unprecedented accuracy. Key innovations include predictive prior authorization capabilities that identify requirements early in the patient journey and patient-facing transparency tools that provide real-time coverage verification and personalized cost estimates. Implementation outcomes demonstrate substantial improvements across financial performance metrics, operational efficiency, workforce optimization, and patient satisfaction dimensions. The solution's impact extends beyond immediate financial benefits to enhance clinical workflow efficiency and patient experience through proactive financial communication. Future development pathways focus on integrating social determinants of health data to optimize coverage opportunities, implementing blockchain-based verification audit trails for dispute resolution, and expanding to real-time multi-payer claim adjudication. The case illustrates how thoughtfully designed artificial intelligence applications can simultaneously address financial sustainability objectives and patient-centered care principles in modern healthcare delivery.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (7)
Pages
550-559
Published
Copyright
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.