Synergizing AI, IoT, and Blockchain: Empowering Next-Generation Smart Systems in Healthcare

Balaram Yadav Kasula

Abstract


This paper explores the transformative potential of converging technologies—Artificial Intelligence (AI), Internet of Things (IoT), and Blockchain—in revolutionizing healthcare systems. It investigates their individual and collective impact on healthcare delivery, emphasizing AI's predictive analytics, IoT's remote monitoring capabilities, and Blockchain's secure data management. The study navigates through challenges, ethical considerations, and regulatory implications entwined with integrating these technologies in healthcare. Through comprehensive analysis and insights from scholarly resources, this research advocates collaborative efforts among healthcare professionals, technologists, and policymakers to harness the collective power of AI, IoT, and Blockchain. The synthesized findings aim to offer a holistic understanding of their synergistic roles in enhancing patient care, system efficiency, and the future trajectory of smart healthcare systems.

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