Integrating AI-Powered RPA Systems to Improve Efficiency in Medicaid Claims Processing
Keywords:
Medicaid, AI, RPA, Intelligent Automation, Healthcare Technology, Claims Processing, Public Health Administration, Process EfficiencyAbstract
Medicaid claims processing is an intricate administrative function burdened by large volumes, compliance requirements, and legacy systems. In recent years, the integration of Artificial Intelligence (AI) with Robotic Process Automation (RPA) — termed Intelligent Automation — has emerged as a transformative solution to enhance process efficiency, reduce error rates, and improve compliance. This paper investigates the application of AI-powered RPA in Medicaid claims processing from perspective. It provides a literature review of related technologies, discusses implementation methodologies, assesses improvements in efficiency and error reduction, and outlines future directions. The study finds that Intelligent Automation holds significant promise, but its effectiveness depends on strategic implementation, data quality, and regulatory alignment.
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Copyright (c) 2024 Sebastian Quintero (Author)

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