LEVERAGING ARTIFICIAL INTELLIGENCE IN MANAGING US HEALTH DATA: IMPLICATIONS FOR MEDICARE AND MEDICAID CLAIMS AND DATA SECURITY
Keywords:
Artificial Intelligence (AI), Health Data Management, Medicare Claims, Data SecurityAbstract
This research paper explores the intersection of artificial intelligence (AI) and health data management in the United States, focusing on Medicare and Medicaid claims. It examines the potential benefits and challenges of using AI to enhance the efficiency and accuracy of claims processing, improve patient outcomes, and ensure data security. The paper also discusses the implications of AI-driven solutions for healthcare policy and protecting sensitive health information.
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Copyright (c) 2024 Phani Durga Nanda Kishore Kommisetty (Author)

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