Elevating Healthcare through High-Performance Medicine: The Intersection of Human Expertise and Artificial Intelligence

Authors

  • PAWAN WHIG

Abstract

The synergy between human expertise and Artificial Intelligence (AI) has revolutionized healthcare, paving the way for high-performance medicine. This paper delves into the profound impact of AI in healthcare, elucidating how it converges with human capabilities to enhance diagnostics, treatment, and patient care. Through a comprehensive exploration, it unveils how this convergence is reshaping the healthcare landscape, offering novel approaches to personalized medicine, disease management, and healthcare delivery.

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Published

2023-09-29

How to Cite

WHIG, P. (2023). Elevating Healthcare through High-Performance Medicine: The Intersection of Human Expertise and Artificial Intelligence. Transactions on Recent Developments in Health Sectors, 6(6). Retrieved from https://isjr.co.in/index.php/TRDHS/article/view/159

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Section

Articles