AI-Powered Virtual Health Assistants: Transforming Patient Care and Healthcare Delivery

Authors

  • Venkata Sai Teja Yarlagadda

Abstract

Virtual health assistants powered by AI are becoming an essential tool in modern healthcare, offering patients personalized advice, medication reminders, and 24/7 support. This paper examines the development and implementation of AI-powered virtual health assistants, which use natural language processing (NLP) and machine learning to interact with patients, collect health data, and provide health recommendations. We discuss how these assistants can help reduce the burden on healthcare professionals, improve patient engagement, and enhance the overall patient experience. The paper also addresses challenges related to ensuring the accuracy of medical advice, data privacy, and patient trust in virtual assistants.

 

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Published

2018-12-15

How to Cite

Yarlagadda, V. S. T. (2018). AI-Powered Virtual Health Assistants: Transforming Patient Care and Healthcare Delivery. International Journal of Sustainable Development in Computer Science Engineering, 4(4). Retrieved from https://journals.threws.com/index.php/IJSDCSE/article/view/326

Issue

Section

Articles