“Application Of AI And Blockchain In Healthcare Industry”

Main Article Content

Ms Indrani Biswas
Dr R.K Singh

Abstract

This paper explores the multifaceted applications of AI and Blockchain in the healthcare industry, with a scope encompassing their impact on patient care, data security, and operational processes. The primary objectives include providing a comprehensive overview of these technologies, highlighting their potential benefits, identifying key challenges, proposing solutions, and offering insights into the future of healthcare as AI and Blockchain evolve. The integration of AI and Blockchain holds promise for revolutionizing healthcare, offering patient-centric care, and ensuring data security while addressing regulatory, ethical, and interoperability issues that currently pose challenges to their adoption

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How to Cite
Ms Indrani Biswas, & Dr R.K Singh. (2024). “Application Of AI And Blockchain In Healthcare Industry”. Journal of Advanced Zoology, 45(2), 689–694. https://doi.org/10.53555/jaz.v45i2.3983
Section
Articles
Author Biographies

Ms Indrani Biswas

Research scholar (Indus University)

Dr R.K Singh

Registrar (Indus University)

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