Applications of AI in Health Services

Authors

  • Qura Tul Ain Lahore College for Women University Lahore

Keywords:

Health Services, AI, Nursing

Abstract

The effects of artificial intelligence (AI)-based technologies on the healthcare sector are explored in this study. This research examined numerous practical uses of AI in healthcare, in addition to a comprehensive literature evaluation. Based on these findings, it appears that large hospitals are currently utilizing AI-enabled technologies to assist with patient diagnostic and treatment activities across a wide variety of ailments. Additionally, AI technologies are affecting the effectiveness of nursing and hospital management. Although AI is generally welcomed by the healthcare industry, its implementations present both utopian (new possibilities) and dystopian (overcoming obstacles) scenarios. To present a well-rounded picture of the usefulness of AI applications in healthcare, we address the specifics of these potential obstacles. The rapid development of AI and associated technologies will aid in the improvement of operational efficiency and the creation of new value for patients. However, to gain the benefits of technology like AI, comprehensive service transformation and operations planning are essential.

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Published

2023-06-12

How to Cite

Qura Tul Ain. (2023). Applications of AI in Health Services. International Journal of Innovations in Science & Technology, 5(2), 160–177. Retrieved from https://journal.50sea.com/index.php/IJIST/article/view/507