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Artificial Intelligence in the Healthcare Sector

© 2023 by IJACT

Volume 1 Issue 2

Year of Publication : 2023

Author : Mukhtar Ibrahim Bello, Muhammad Ahmad Baballe

:10.56472/25838628/IJACT-V1I2P102

Citation :

Mukhtar Ibrahim Bello, Muhammad Ahmad Baballe, 2023. "Artificial Intelligence in the Healthcare Sector" ESP International Journal of Advancements in Computational Technology (ESP-IJACT)  Volume 1, Issue 2: 9-12.

Abstract :

A subfield of artificial intelligence called "machine learning" enables computers to learn from data without explicit human programming. In a broad sense, artificial intelligence (AI) refers to any computer or system behavior that resembles human behavior. One of the most significant contemporary trends in global healthcare is the use of artificial intelligence (AI) technologies in medicine. Technologies based on artificial intelligence are profoundly transforming the world's healthcare system, enabling a dramatic reconstruction of the medical diagnostics system while simultaneously lowering healthcare expenditures. Identifying the class of diseases to which a disease belongs is crucial before treating it. It is feasible to categorize the type of disease based on the feature space of the condition. Algorithms for machine learning can address this issue.

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Keywords :

Medicine, Machine Learning, Healthcare, Artificial intelligence (AI), Technologies, Chronic Diseases.