The Influence of AI: The Revolutionary Effects of Artificial Intelligence in Healthcare Sector

Ashish K. Saxena *

Indian Institute of Technology Delhi (IIT Delhi), India.

Stephanie Ness

Diplomatische Akademie, Austria.

Tushar Khinvasara

Medical Device Manufacturing, USA.

*Author to whom correspondence should be addressed.


Abstract

The application of artificial intelligence (AI) in healthcare is growing as it becomes more prevalent in modern business and everyday life. It is frequently regarded as a significant technological advancement in the present period. In recent times, the fields of artificial intelligence (AI) and big data analytics have been utilised in the domain of mobile health (m-health) to establish a highly efficient healthcare system. Modern medical research utilises diverse and poorly understood data, including electronic health records (EHRs), medical imaging, and complex language that is widely unorganised. The growth of mobile applications, together with healthcare systems, is a significant factor leading to the presence of disorganised and unstructured datasets. The enhanced accessibility of diverse datasets and advanced computer techniques like machine learning can enable researchers to usher in a new era of highly efficient genetic therapy. This review paper has clarified the role of machine learning algorithms in healthcare systems.

Keywords: AI, artificial intelligence in healthcare, effects of AI


How to Cite

Saxena , A. K., Ness , S., & Khinvasara , T. (2024). The Influence of AI: The Revolutionary Effects of Artificial Intelligence in Healthcare Sector. Journal of Engineering Research and Reports, 26(3), 49–62. https://doi.org/10.9734/jerr/2024/v26i31092

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